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Emperical Interference

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Physics for Inference and Optimization

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Robot Learning

Conference Paper

2022

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Haptic Intelligence Article Hierarchical Task-Parameterized Learning from Demonstration for Collaborative Object Movement Hu, S., Kuchenbecker, K. J. Applied Bionics and Biomechanics, 2019(9765383):1-25, December 2019 (Published)
Learning from demonstration (LfD) enables a robot to emulate natural human movement instead of merely executing preprogrammed behaviors. This article presents a hierarchical LfD structure of task-parameterized models for object movement tasks, which are ubiquitous in everyday life and could benefit from robotic support. Our approach uses the task-parameterized Gaussian mixture model (TP-GMM) algorithm to encode sets of demonstrations in separate models that each correspond to a different task situation. The robot then maximizes its expected performance in a new situation by either selecting a good existing model or requesting new demonstrations. Compared to a standard implementation that encodes all demonstrations together for all test situations, the proposed approach offers four advantages. First, a simply defined distance function can be used to estimate test performance by calculating the similarity between a test situation and the existing models. Second, the proposed approach can improve generalization, e.g., better satisfying the demonstrated task constraints and speeding up task execution. Third, because the hierarchical structure encodes each demonstrated situation individually, a wider range of task situations can be modeled in the same framework without deteriorating performance. Last, adding or removing demonstrations incurs low computational load, and thus, the robot’s skill library can be built incrementally. We first instantiate the proposed approach in a simulated task to validate these advantages. We then show that the advantages transfer to real hardware for a task where naive participants collaborated with a Willow Garage PR2 robot to move a handheld object. For most tested scenarios, our hierarchical method achieved significantly better task performance and subjective ratings than both a passive model with only gravity compensation and a single TP-GMM encoding all demonstrations.
DOI BibTeX

Haptic Intelligence Conference Paper Deep Neural Network Approach in Electrical Impedance Tomography-Based Real-Time Soft Tactile Sensor Park, H., Lee, H., Park, K., Mo, S., Kim, J. IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), (999)7447-7452, IEEE, 2019 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), November 2019 (Published)
Recently, a whole-body tactile sensing have emerged in robotics for safe human-robot interaction. A key issue in the whole-body tactile sensing is ensuring large-area manufacturability and high durability. To fulfill these requirements, a reconstruction method called electrical impedance tomography (EIT) was adopted in large-area tactile sensing. This method maps voltage measurements to conductivity distribution using only a few number of measurement electrodes. A common approach for the mapping is using a linearized model derived from the Maxwell's equation. This linearized model shows fast computation time and moderate robustness against measurement noise but reconstruction accuracy is limited. In this paper, we propose a novel nonlinear EIT algorithm through Deep Neural Network (DNN) approach to improve the reconstruction accuracy of EIT-based tactile sensors. The neural network architecture with rectified linear unit (ReLU) function ensured extremely low computational time (0.002 seconds) and nonlinear network structure which provides superior measurement accuracy. The DNN model was trained with dataset synthesized in simulation environment. To achieve the robustness against measurement noise, the training proceeded with additive Gaussian noise that estimated through actual measurement noise. For real sensor application, the trained DNN model was transferred to a conductive fabric-based soft tactile sensor. For validation, the reconstruction error and noise robustness were mainly compared using conventional linearized model and proposed approach in simulation environment. As a demonstration, the tactile sensor equipped with the trained DNN model is presented for a contact force estimation.
DOI BibTeX

Haptic Intelligence Miscellaneous A Fabric-based Scalable Robotic Skin Mimicking Biological Tactile Hyperacuity Lee, H., Park, K., Kim, J., Kuchenbecker, K. J. Workshop paper (3 pages) presented at the IROS RoboTac Workshop on New Advances in Tactile Sensation, Perception, and Learning in Robotics: Emerging Materials and Technologies for Manipulation, Macao, China, November 2019, Co-Winner of the Award for Best Poster (Published)
Implementing a whole-body tactile sensor is becoming a critical topic in robotics since physical contacts can occur at any location of the robot. Fabricating such a large-scale system typically requires complex electrical wiring to achieve high spatial resolution. Interestingly, biological skins have tactile hyperacuity, which is enabled by overlapping the receptive fields. This study introduces a fabric-based tactile sensor inspired by this biological feature. The tactile sensor injects electrical current into a pair of electrodes and measures the corresponding electrical potentials formed around the current pathway, which can be considered as a receptive field. When two or more neighboring pairs of electrodes are sampled, sensitive regions overlap in a way similar to the biological system. For the experiments, a fabric-based tactile sensor with only 24 electrodes in an area of 200 mm × 200 mm is developed. The sensor can localize point contact with an error of 8.13 mm, while the sensor’s minimum two-point discrimination distance is nearly 35 mm. This performance is comparable to that of the stomach region of human skin. This sensing approach could greatly simplify whole-body tactile skin development in the future.
BibTeX

Haptic Intelligence Miscellaneous HuggieChest: An Inflatable Haptic Sensing Chest for a Hugging Robot Block, A. E., Kuchenbecker, K. J. Workshop paper (4 pages) presented at the IROS RoboTac Workshop on New Advances in Tactile Sensation, Perception, and Learning in Robotics: Emerging Materials and Technologies for Manipulation, Macao, China, November 2019 (Published)
During hugs, humans naturally provide and intuit subtle non-verbal cues that signify the desired strength and duration of an exchanged hug. Personal preferences for this close interaction may vary greatly between people; robots do not currently have the abilities to perceive or understand these preferences. This workshop paper discusses designing, building, and testing a novel inflatable chest that can simultaneously soften a robot and act as a tactile sensor to enable more natural and responsive hugging. Using PVC vinyl, two microphones, and two barometric pressure sensors, we created an inflatable two-chambered chest that forms the torso of a hugging robot. One chamber is located in the front of the robot, and the other chamber is in the back. While contacting HuggieChest in several ways common in hugs (start hug, rub, scratch, pat, squeeze, release), we recorded data from the two sensors in each chamber. The preliminary results suggest that the complementary haptic sensing channels allow the robot wearing the chest to detect coarse and fine contacts typically experienced during hugs, regardless of where the user contacts the robot. We also verified that we can detect contacts regardless of noise from the robot’s movement, as long as the HuggieChest is inflated within a certain pressure range.
BibTeX

Haptic Intelligence Miscellaneous Robust Visual Augmented Reality for Robot-Assisted Surgery Forte, M., Kuchenbecker, K. J. Extended abstract presented as a podium presentation at the IROS Workshop on Legacy Disruptors in Applied Telerobotics, Macao, China, November 2019 (Published) BibTeX

Haptic Intelligence Article Low-Hysteresis and Low-Interference Soft Tactile Sensor Using a Conductive Coated Porous Elastomer and a Structure for Interference Reduction Park, K., Kim, S., Lee, H., Park, I., Kim, J. Sensors and Actuators A: Physical, 295:541-550, August 2019 (Published)
The need for soft whole-body tactile sensors is emerging. Piezoresistive materials are advantageous in terms of making large tactile sensors, but the hysteresis of piezoresistive materials is a major drawback. The hysteresis of a piezoresistive material should be attenuated to make a practical piezoresistive soft tactile sensor. In this paper, we introduce a low-hysteresis and low-interference soft tactile sensor using a conductive coated porous elastomer and a structure to reduce interference (grooves). The developed sensor exhibits low hysteresis because the transduction mechanism of the sensor is dominated by the contact between the conductive coated surface. In a cyclic loading experiment with different loading frequencies, the mechanical and piezoresistive hysteresis values of the sensor are less than 21.7% and 6.8%, respectively. The initial resistance change is found to be within 4% after the first loading cycle. To reduce the interference among the sensing points, we also propose a structure where the grooves are inserted between the adjacent electrodes. This structure is implemented during the molding process, which is adopted to extend the porous tactile sensor to large-scale and facile fabrication. The effects of the structure are investigated with respect to the normalized design parameters ΘD, ΘW, and ΘT in a simulation, and the result is validated for samples with the same design parameters. An indentation experiment also shows that the structure designed for interference reduction effectively attenuates the interference of the sensor array, indicating that the spatial resolution of the sensor array is improved. As a result, the sensor can exhibit low hysteresis and low interference simultaneously. This research can be used for many applications, such as robotic skin, grippers, and wearable devices.
DOI BibTeX

Haptic Intelligence Conference Paper Effect of Remote Masking on Detection of Electrovibration Jamalzadeh, M., Güçlü, B., Vardar, Y., Basdogan, C. In Proceedings of the IEEE World Haptics Conference (WHC), 229-234, Tokyo, Japan, July 2019 (Published)
Masking has been used to study human perception of tactile stimuli, including those created on haptic touch screens. Earlier studies have investigated the effect of in-site masking on tactile perception of electrovibration. In this study, we investigated whether it is possible to change detection threshold of electrovibration at fingertip of index finger via remote masking, i.e. by applying a (mechanical) vibrotactile stimulus on the proximal phalanx of the same finger. The masking stimuli were generated by a voice coil (Haptuator). For eight participants, we first measured the detection thresholds for electrovibration at the fingertip and for vibrotactile stimuli at the proximal phalanx. Then, the vibrations on the skin were measured at four different locations on the index finger of subjects to investigate how the mechanical masking stimulus propagated as the masking level was varied. Finally, electrovibration thresholds measured in the presence of vibrotactile masking stimuli. Our results show that vibrotactile masking stimuli generated sub-threshold vibrations around fingertip, and hence did not mechanically interfere with the electrovibration stimulus. However, there was a clear psychophysical masking effect due to central neural processes. Electrovibration absolute threshold increased approximately 0.19 dB for each dB increase in the masking level.
DOI BibTeX

Haptic Intelligence Miscellaneous Fingertip Friction Enhances Perception of Normal Force Changes Gueorguiev, D., Lambert, J., Thonnard, J., Kuchenbecker, K. J. Work-in-progress paper (2 pages) presented at the IEEE World Haptics Conference (WHC), Tokyo, Japan, July 2019 (Published)
Using a force-controlled robotic platform, we tested the human perception of positive and negative modulations in normal force during passive dynamic touch, which also induced a strong related change in the finger-surface lateral force. In a two-alternative forced-choice task, eleven participants had to detect brief variations in the normal force compared to a constant controlled pre-stimulation force of 1 N and report whether it had increased or decreased. The average 75% just noticeable difference (JND) was found to be around 0.25 N for detecting the peak change and 0.30 N for correctly reporting the increase or the decrease. Interestingly, the friction coefficient of a subject’s fingertip positively correlated with his or her performance at detecting the change and reporting its direction, which suggests that humans may use the lateral force as a sensory cue to perceive variations in the normal force.
BibTeX

Haptic Intelligence Conference Paper Fingertip Interaction Metrics Correlate with Visual and Haptic Perception of Real Surfaces Vardar, Y., Wallraven, C., Kuchenbecker, K. J. In Proceedings of the IEEE World Haptics Conference (WHC), 395-400, Tokyo, Japan, July 2019 (Published)
Both vision and touch contribute to the perception of real surfaces. Although there have been many studies on the individual contributions of each sense, it is still unclear how each modality’s information is processed and integrated. To fill this gap, we investigated the similarity of visual and haptic perceptual spaces, as well as how well they each correlate with fingertip interaction metrics. Twenty participants interacted with ten different surfaces from the Penn Haptic Texture Toolkit by either looking at or touching them and judged their similarity in pairs. By analyzing the resulting similarity ratings using multi-dimensional scaling (MDS), we found that surfaces are similarly organized within the three-dimensional perceptual spaces of both modalities. Also, between-participant correlations were significantly higher in the haptic condition. In a separate experiment, we obtained the contact forces and accelerations acting on one finger interacting with each surface in a controlled way. We analyzed the collected fingertip interaction data in both the time and frequency domains. Our results suggest that the three perceptual dimensions for each modality can be represented by roughness/smoothness, hardness/softness, and friction, and that these dimensions can be estimated by surface vibration power, tap spectral centroid, and kinetic friction coefficient, respectively.
DOI BibTeX

Haptic Intelligence Miscellaneous High-Fidelity Multiphysics Finite Element Modeling of Finger-Surface Interactions with Tactile Feedback Serhat, G., Kuchenbecker, K. J. Work-in-progress paper (2 pages) presented at the IEEE World Haptics Conference (WHC), Tokyo, Japan, July 2019 (Published)
In this study, we develop a high-fidelity finite element (FE) analysis framework that enables multiphysics simulation of the human finger in contact with a surface that is providing tactile feedback. We aim to elucidate a variety of physical interactions that can occur at finger-surface interfaces, including contact, friction, vibration, and electrovibration. We also develop novel FE-based methods that will allow prediction of nonconventional features such as real finger-surface contact area and finger stickiness. We envision using the developed computational tools for efficient design and optimization of haptic devices by replacing expensive and lengthy experimental procedures with high-fidelity simulation.
BibTeX

Haptic Intelligence Miscellaneous Inflatable Haptic Sensor for the Torso of a Hugging Robot Block, A. E., Kuchenbecker, K. J. Work-in-progress paper (2 pages) presented at the IEEE World Haptics Conference (WHC), Tokyo, Japan, July 2019 (Published)
During hugs, humans naturally provide and intuit subtle non-verbal cues that signify the strength and duration of an exchanged hug. Personal preferences for this close interaction may vary greatly between people; robots do not currently have the abilities to perceive or understand these preferences. This work-in-progress paper discusses designing, building, and testing a novel inflatable torso that can simultaneously soften a robot and act as a tactile sensor to enable more natural and responsive hugging. Using PVC vinyl, a microphone, and a barometric pressure sensor, we created a small test chamber to demonstrate a proof of concept for the full torso. While contacting the chamber in several ways common in hugs (pat, squeeze, scratch, and rub), we recorded data from the two sensors. The preliminary results suggest that the complementary haptic sensing channels allow us to detect coarse and fine contacts typically experienced during hugs, regardless of user hand placement.
BibTeX

Haptic Intelligence Conference Paper Objective and Subjective Assessment of Algorithms for Reducing Three-Axis Vibrations to One-Axis Vibrations Park, G., Kuchenbecker, K. J. In Proceedings of the IEEE World Haptics Conference (WHC), 467-472, Tokyo, Japan, July 2019 (Published)
A typical approach to creating realistic vibrotactile feedback is reducing 3D vibrations recorded by an accelerometer to 1D signals that can be played back on a haptic actuator, but some of the information is often lost in this dimensional reduction process. This paper describes seven representative algorithms and proposes four metrics based on the spectral match, the temporal match, and the average value and the variability of them across 3D rotations. These four performance metrics were applied to four texture recordings, and the method utilizing the discrete fourier transform (DFT) was found to be the best regardless of the sensing axis. We also recruited 16 participants to assess the perceptual similarity achieved by each algorithm in real time. We found the four metrics correlated well with the subjectively rated similarities for the six dimensional reduction algorithms, with the exception of taking the 3D vector magnitude, which was perceived to be good despite its low spectral and temporal match metrics.
DOI BibTeX

Haptic Intelligence Article Tactile Roughness Perception of Virtual Gratings by Electrovibration Isleyen, A., Vardar, Y., Basdogan, C. IEEE Transactions on Haptics, 13(3):562-570, July 2019 (Published) DOI BibTeX

Haptic Intelligence Miscellaneous The Haptician and the Alphamonsters Forte, M., L’Orsa, R., Mohan, M., Nam, S., Kuchenbecker, K. J. Student Innovation Challenge on Implementing Haptics in Virtual Reality Environment presented at the IEEE World Haptics Conference, Tokyo, Japan, July 2019, Maria-Paola Forte, Rachael L'Orsa, Mayumi Mohan, and Saekwang Nam contributed equally to this publication (Published)
Dysgraphia is a neurological disorder characterized by writing disabilities that affects between 7% and 15% of children. It presents itself in the form of unfinished letters, letter distortion, inconsistent letter size, letter collision, etc. Traditional therapeutic exercises require continuous assistance from teachers or occupational therapists. Autonomous partial or full haptic guidance can produce positive results, but children often become bored with the repetitive nature of such activities. Conversely, virtual rehabilitation with video games represents a new frontier for occupational therapy due to its highly motivational nature. Virtual reality (VR) adds an element of novelty and entertainment to therapy, thus motivating players to perform exercises more regularly. We propose leveraging the HTC VIVE Pro and the EXOS Wrist DK2 to create an immersive spellcasting “exergame” (exercise game) that helps motivate children with dysgraphia to improve writing fluency.
Student Innovation Challenge – Virtual Reality BibTeX

Haptic Intelligence Miscellaneous Understanding the Pull-off Force of the Human Fingerpad Nam, S., Kuchenbecker, K. J. Work-in-progress paper (2 pages) presented at the IEEE World Haptics Conference (WHC), Tokyo, Japan, July 2019 (Published)
To understand the adhesive force that occurs when a finger pulls off of a smooth surface, we built an apparatus to measure the fingerpad’s moisture, normal force, and real contact area over time during interactions with a glass plate. We recorded a total of 450 trials (45 interactions by each of ten human subjects), capturing a wide range of values across the aforementioned variables. The experimental results showed that the pull-off force increases with larger finger contact area and faster detachment rate. Additionally, moisture generally increases the contact area of the finger, but too much moisture can restrict the increase in the pull-off force.
BibTeX

Haptic Intelligence Article Implementation of a 6-DOF Parallel Continuum Manipulator for Delivering Fingertip Tactile Cues Young, E. M., Kuchenbecker, K. J. IEEE Transactions on Haptics, 12(3):295-306, June 2019 (Published)
Existing fingertip haptic devices can deliver different subsets of tactile cues in a compact package, but we have not yet seen a wearable six-degree-of-freedom (6-DOF) display. This paper presents the Fuppeteer (short for Fingertip Puppeteer), a device that is capable of controlling the position and orientation of a flat platform, such that any combination of normal and shear force can be delivered at any location on any human fingertip. We build on our previous work of designing a parallel continuum manipulator for fingertip haptics by presenting a motorized version in which six flexible Nitinol wires are actuated via independent roller mechanisms and proportional-derivative controllers. We evaluate the settling time and end-effector vibrations observed during system responses to step inputs. After creating a six-dimensional lookup table and adjusting simulated inputs using measured Jacobians, we show that the device can make contact with all parts of the fingertip with a mean error of 1.42 mm. Finally, we present results from a human-subject study. A total of 24 users discerned 9 evenly distributed contact locations with an average accuracy of 80.5%. Translational and rotational shear cues were identified reasonably well near the center of the fingertip and more poorly around the edges.
DOI BibTeX

Haptic Intelligence Conference Paper A Clustering Approach to Categorizing 7 Degree-of-Freedom Arm Motions during Activities of Daily Living Gloumakov, Y., Spiers, A. J., Dollar, A. M. In Proceedings of the International Conference on Robotics and Automation (ICRA), 7214-7220, Montreal, Canada, May 2019 (Published)
In this paper we present a novel method of categorizing naturalistic human arm motions during activities of daily living using clustering techniques. While many current approaches attempt to define all arm motions using heuristic interpretation, or a combination of several abstract motion primitives, our unsupervised approach generates a hierarchical description of natural human motion with well recognized groups. Reliable recommendation of a subset of motions for task achievement is beneficial to various fields, such as robotic and semi-autonomous prosthetic device applications. The proposed method makes use of well-known techniques such as dynamic time warping (DTW) to obtain a divergence measure between motion segments, DTW barycenter averaging (DBA) to get a motion average, and Ward's distance criterion to build the hierarchical tree. The clusters that emerge summarize the variety of recorded motions into the following general tasks: reach-to-front, transfer-box, drinking from vessel, on-table motion, turning a key or door knob, and reach-to-back pocket. The clustering methodology is justified by comparing against an alternative measure of divergence using Bezier coefficients and K-medoids clustering.
DOI BibTeX

Haptic Intelligence Miscellaneous Explorations of Shape-Changing Haptic Interfaces for Blind and Sighted Pedestrian Navigation Spiers, A., Kuchenbecker, K. J. Workshop paper (6 pages) presented at the CHI Workshop on Hacking Blind Navigation, Glasgow, UK, May 2019 (Published)
Since the 1960s, technologists have worked to develop systems that facilitate independent navigation by vision-impaired (VI) pedestrians. These devices vary in terms of conveyed information and feedback modality. Unfortunately, many such prototypes never progress beyond laboratory testing. Conversely, smartphone-based navigation systems for sighted pedestrians have grown in robustness and capabilities, to the point of now being ubiquitous. How can we leverage the success of sighted navigation technology, which is driven by a larger global market, as a way to progress VI navigation systems? We believe one possibility is to make common devices that benefit both VI and sighted individuals, by providing information in a way that does not distract either user from their tasks or environment. To this end we have developed physical interfaces that eschew visual, audio or vibratory feedback, instead relying on the natural human ability to perceive the shape of a handheld object.
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Haptic Intelligence Conference Paper Haptipedia: Accelerating Haptic Device Discovery to Support Interaction & Engineering Design Seifi, H., Fazlollahi, F., Oppermann, M., Sastrillo, J. A., Ip, J., Agrawal, A., Park, G., Kuchenbecker, K. J., MacLean, K. E. In Proceedings of the ACM SIGCHI Conference on Human Factors in Computing Systems (CHI), 1-12, Glasgow, UK, May 2019 (Published)
Creating haptic experiences often entails inventing, modifying, or selecting specialized hardware. However, experience designers are rarely engineers, and 30 years of haptic inventions are buried in a fragmented literature that describes devices mechanically rather than by potential purpose. We conceived of Haptipedia to unlock this trove of examples: Haptipedia presents a device corpus for exploration through metadata that matter to both device and experience designers. It is a taxonomy of device attributes that go beyond physical description to capture potential utility, applied to a growing database of 105 grounded force-feedback devices, and accessed through a public visualization that links utility to morphology. Haptipedia's design was driven by both systematic review of the haptic device literature and rich input from diverse haptic designers. We describe Haptipedia's reception (including hopes it will redefine device reporting standards) and our plans for its sustainability through community participation.
DOI BibTeX

Haptic Intelligence Conference Paper Improving Haptic Adjective Recognition with Unsupervised Feature Learning Richardson, B. A., Kuchenbecker, K. J. In Proceedings of the IEEE International Conference on Robotics and Automation (ICRA), 3804-3810, Montreal, Canada, May 2019 (Published)
Humans can form an impression of how a new object feels simply by touching its surfaces with the densely innervated skin of the fingertips. Many haptics researchers have recently been working to endow robots with similar levels of haptic intelligence, but these efforts almost always employ hand-crafted features, which are brittle, and concrete tasks, such as object recognition. We applied unsupervised feature learning methods, specifically K-SVD and Spatio-Temporal Hierarchical Matching Pursuit (ST-HMP), to rich multi-modal haptic data from a diverse dataset. We then tested the learned features on 19 more abstract binary classification tasks that center on haptic adjectives such as smooth and squishy. The learned features proved superior to traditional hand-crafted features by a large margin, almost doubling the average F1 score across all adjectives. Additionally, particular exploratory procedures (EPs) and sensor channels were found to support perception of certain haptic adjectives, underlining the need for diverse interactions and multi-modal haptic data.
DOI BibTeX

Haptic Intelligence Conference Paper Internal Array Electrodes Improve the Spatial Resolution of Soft Tactile Sensors Based on Electrical Resistance Tomography Lee, H., Park, K., Kim, J., Kuchenbecker, K. J. In Proceedings of the IEEE International Conference on Robotics and Automation (ICRA), 5411-5417, Montreal, Canada, May 2019, Hyosang Lee and Kyungseo Park contributed equally to this publication (Published) DOI BibTeX

Haptic Intelligence Miscellaneous Toward Expert-Sourcing of a Haptic Device Repository Seifi, H., Ip, J., Agrawal, A., Kuchenbecker, K. J., MacLean, K. E. Workshop paper (5 pages) published at the CHI Workshop on Designing Crowd-powered Creativity Support Systems, Glasgow, UK, May 2019 (Published)
Haptipedia is an online taxonomy, database, and visualization that aims to accelerate ideation of new haptic devices and interactions in human-computer interaction, virtual reality, haptics, and robotics. The current version of Haptipedia (105 devices) was created through iterative design, data entry, and evaluation by our team of experts. Next, we aim to greatly increase the number of devices and keep Haptipedia updated by soliciting data entry and verification from haptics experts worldwide.
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Haptic Intelligence Miscellaneous Bimanual Wrist-Squeezing Haptic Feedback Changes Speed-Force Tradeoff in Robotic Surgery Training Cao, E., Machaca, S., Bernard, T., Wolfinger, B., Patterson, Z., Chi, A., Adrales, G. L., Kuchenbecker, K. J., Brown, J. D. Extended abstract (1 page) presented as an ePoster at the Annual Meeting of the Society of American Gastrointestinal and Endoscopic Surgeons (SAGES), Baltimore, USA, April 2019 (Published) URL BibTeX

Haptic Intelligence Miscellaneous Interactive Augmented Reality for Robot-Assisted Surgery Forte, M., Kuchenbecker, K. J. Extended abstract presented as an Emerging Technology ePoster at the Annual Meeting of the Society of American Gastrointestinal and Endoscopic Surgeons (SAGES), Baltimore, USA, April 2019 (Published) BibTeX

Haptic Intelligence Miscellaneous A Design Tool for Therapeutic Social-Physical Human-Robot Interactions Mohan, M., Kuchenbecker, K. J. 727-729, Workshop paper (3 pages) presented at the HRI Pioneers Workshop, Daegu, South Korea, March 2019 (Published)
We live in an aging society; social-physical human-robot interaction has the potential to keep our elderly adults healthy by motivating them to exercise. After summarizing prior work, this paper proposes a tool that can be used to design exercise and therapy interactions to be performed by an upper-body humanoid robot. The interaction design tool comprises a teleoperation system that transmits the operator’s arm motions, head motions and facial expression along with an interface to monitor and assess the motion of the user interacting with the robot. We plan to use this platform to create dynamic and intuitive exercise interactions.
DOI BibTeX

Haptic Intelligence Conference Paper A Novel Texture Rendering Approach for Electrostatic Displays Fiedler, T., Vardar, Y. In Proceedings of International Workshop on Haptic and Audio Interaction Design (HAID), Lille, France, March 2019 (Published)
Generating realistic texture feelings on tactile displays using data-driven methods has attracted a lot of interest in the last decade. However, the need for large data storages and transmission rates complicates the use of these methods for the future commercial displays. In this paper, we propose a new texture rendering approach which can compress the texture data signicantly for electrostatic displays. Using three sample surfaces, we first explain how to record, analyze and compress the texture data, and render them on a touchscreen. Then, through psychophysical experiments conducted with nineteen participants, we show that the textures can be reproduced by a signicantly less number of frequency components than the ones in the original signal without inducing perceptual degradation. Moreover, our results indicate that the possible degree of compression is affected by the surface properties.
Fiedler19-HAID-Electrostatic URL BibTeX

Perceiving Systems Empirical Inference Haptic Intelligence Physical Intelligence MPI Year Book Scientific Report 2016 - 2018 2019
This report presents research done at the Max Planck Institute for Intelligent Systems from January 2016 to December 2018. It is our third report since the founding of the institute in 2011. This status report is organized as follows: we begin with an overview of the institute, including its organizational structure (Chapter 1). The central part of the scientific report consists of chapters on the research conducted by the institute’s departments (Chapters 2 to 5) and its independent research groups (Chapters 6 to 18), as well as the work of the institute’s central scientific facilities (Chapter 19). For entities founded after January 2016, the respective report sections cover work done from the date of the establishment of the department, group, or facility.
Scientific Report 2016 - 2018 BibTeX