surface material
Learning-Based Wiping Behavior of Low-Rigidity Robots Considering Various Surface Materials and Task Definitions
Kawaharazuka, Kento, Kanazawa, Naoaki, Okada, Kei, Inaba, Masayuki
Wiping behavior is a task of tracing the surface of an object while feeling the force with the palm of the hand. It is necessary to adjust the force and posture appropriately considering the various contact conditions felt by the hand. Several studies have been conducted on the wiping motion, however, these studies have only dealt with a single surface material, and have only considered the application of the amount of appropriate force, lacking intelligent movements to ensure that the force is applied either evenly to the entire surface or to a certain area. Depending on the surface material, the hand posture and pressing force should be varied appropriately, and this is highly dependent on the definition of the task. Also, most of the movements are executed by high-rigidity robots that are easy to model, and few movements are executed by robots that are low-rigidity but therefore have a small risk of damage due to excessive contact. So, in this study, we develop a method of motion generation based on the learned prediction of contact force during the wiping motion of a low-rigidity robot. We show that MyCobot, which is made of low-rigidity resin, can appropriately perform wiping behaviors on a plane with multiple surface materials based on various task definitions.
Current and Future Challenges in Humanoid Robotics -- An Empirical Investigation
Paetzel-Prüsmann, Maike, Rossi, Alessandra, Keijsers, Merel
The goal of RoboCup is to make research in the area of robotics measurable over time, and grow a community that works together to solve increasingly difficult challenges over the years. The most ambitious of these challenges it to be able to play against the human world champions in soccer in 2050. To better understand what members of the RoboCup community believes to be the state of the art and the main challenges in the next decade and towards the 2050 game, we developed a survey and distributed it to members of different experience level and background within the community. We present data from 39 responses. Results highlighted that locomotion, awareness and decision-making, and robustness of robots are among those considered of high importance for the community, while human-robot interaction and natural language processing and generation are rated of low in importance and difficulty.
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Boosted Semantic Embedding based Discriminative Feature Generation for Texture Analysis
Kumari, Priyadarshini, Chaudhuri, Subhasis
Learning discriminative features is crucial for various robotic applications such as object detection and classification. In this paper, we present a general framework for the analysis of the discriminative properties of haptic signals. Our focus is on two crucial components of a robotic perception system: discriminative feature extraction and metric-based feature transformation to enhance the separability of haptic signals in the projected space. We propose a set of hand-crafted haptic features (generated only from acceleration data), which enables discrimination of real-world textures. Since the Euclidean space does not reflect the underlying pattern in the data, we propose to learn an appropriate transformation function to project the feature onto the new space and apply different pattern recognition algorithms for texture classification and discrimination tasks. Unlike other existing methods, we use a triplet-based method for improved discrimination in the embedded space. We further demonstrate how to build a haptic vocabulary by selecting a compact set of the most distinct and representative signals in the embedded space. The experimental results show that the proposed features augmented with learned embedding improves the performance of semantic discrimination tasks such as classification and clustering and outperforms the related state-of-the-art.
OSIRIS-REx marks the spot: NASA selects a landing site on asteroid 'Bennu' for its 2020 mission
NASA has selected the site for its asteroid sample collection mission from the four previously-proposed candidates after a year of study. The spinning-top-shaped asteroid, '101955 Bennu', is a 1,614 feet (492 m) wide near-Earth object with a cumulative 1-in-2,700 chance of hitting Earth from 2175–2199. The chosen primary sample site -- dubbed'Nightingale' -- is located in a young crater high up in the asteroid's northern hemisphere. The Origins, Spectral Interpretation, Resource Identification, Security, Regolith Explorer -- or OSIRIS-Rex -- craft has been analysing Bennu since December 2018. If successful in its mission, OSIRIS-Rex will be the first US spacecraft to return samples of an asteroid to the Earth for analysis. For NASA researchers, Bennu will act like a time-capsule from the birth of the solar system, containing information on its formation and evolution.
- Government > Space Agency (0.83)
- Government > Regional Government > North America Government > United States Government (0.83)
Unmixing Hyperspectral Data
Parra, Lucas C., Spence, Clay, Sajda, Paul, Ziehe, Andreas, Müller, Klaus-Robert
In hyperspectral imagery one pixel typically consists of a mixture of the reflectance spectra of several materials, where the mixture coefficients correspond to the abundances of the constituting materials. We assume linear combinations of reflectance spectra with some additive normal sensor noise and derive a probabilistic MAP framework for analyzing hyperspectral data. As the material reflectance characteristics are not know a priori, we face the problem of unsupervised linear unmixing.
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- North America > United States > Washington > Whatcom County > Bellingham (0.04)
- North America > United States > New Jersey > Mercer County > Princeton (0.04)
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- Energy (0.49)
- Government > Regional Government > North America Government > United States Government (0.31)
Unmixing Hyperspectral Data
Parra, Lucas C., Spence, Clay, Sajda, Paul, Ziehe, Andreas, Müller, Klaus-Robert
In hyperspectral imagery one pixel typically consists of a mixture of the reflectance spectra of several materials, where the mixture coefficients correspond to the abundances of the constituting materials. We assume linear combinations of reflectance spectra with some additive normal sensor noise and derive a probabilistic MAP framework for analyzing hyperspectral data. As the material reflectance characteristics are not know a priori, we face the problem of unsupervised linear unmixing.
- North America > United States > Nevada (0.05)
- North America > United States > Washington > Whatcom County > Bellingham (0.04)
- North America > United States > New Jersey > Mercer County > Princeton (0.04)
- (4 more...)
- Energy (0.49)
- Government > Regional Government > North America Government > United States Government (0.31)
Unmixing Hyperspectral Data
Parra, Lucas C., Spence, Clay, Sajda, Paul, Ziehe, Andreas, Müller, Klaus-Robert
In hyperspectral imagery one pixel typically consists of a mixture of the reflectance spectra of several materials, where the mixture coefficients correspond to the abundances of the constituting materials. Weassume linear combinations of reflectance spectra with some additive normal sensor noise and derive a probabilistic MAP framework for analyzing hyperspectral data. As the material reflectance characteristicsare not know a priori, we face the problem of unsupervised linear unmixing.
- North America > United States > Nevada (0.05)
- North America > United States > Washington > Whatcom County > Bellingham (0.04)
- North America > United States > New Jersey > Mercer County > Princeton (0.04)
- (4 more...)
- Energy (0.49)
- Government > Regional Government > North America Government > United States Government (0.31)