6,983 research outputs found
Regulating Highly Automated Robot Ecologies: Insights from Three User Studies
Highly automated robot ecologies (HARE), or societies of independent
autonomous robots or agents, are rapidly becoming an important part of much of
the world's critical infrastructure. As with human societies, regulation,
wherein a governing body designs rules and processes for the society, plays an
important role in ensuring that HARE meet societal objectives. However, to
date, a careful study of interactions between a regulator and HARE is lacking.
In this paper, we report on three user studies which give insights into how to
design systems that allow people, acting as the regulatory authority, to
effectively interact with HARE. As in the study of political systems in which
governments regulate human societies, our studies analyze how interactions
between HARE and regulators are impacted by regulatory power and individual
(robot or agent) autonomy. Our results show that regulator power, decision
support, and adaptive autonomy can each diminish the social welfare of HARE,
and hint at how these seemingly desirable mechanisms can be designed so that
they become part of successful HARE.Comment: 10 pages, 7 figures, to appear in the 5th International Conference on
Human Agent Interaction (HAI-2017), Bielefeld, German
A Unified Model for Near and Remote Sensing
We propose a novel convolutional neural network architecture for estimating
geospatial functions such as population density, land cover, or land use. In
our approach, we combine overhead and ground-level images in an end-to-end
trainable neural network, which uses kernel regression and density estimation
to convert features extracted from the ground-level images into a dense feature
map. The output of this network is a dense estimate of the geospatial function
in the form of a pixel-level labeling of the overhead image. To evaluate our
approach, we created a large dataset of overhead and ground-level images from a
major urban area with three sets of labels: land use, building function, and
building age. We find that our approach is more accurate for all tasks, in some
cases dramatically so.Comment: International Conference on Computer Vision (ICCV) 201
Fully-Coupled Two-Stream Spatiotemporal Networks for Extremely Low Resolution Action Recognition
A major emerging challenge is how to protect people's privacy as cameras and
computer vision are increasingly integrated into our daily lives, including in
smart devices inside homes. A potential solution is to capture and record just
the minimum amount of information needed to perform a task of interest. In this
paper, we propose a fully-coupled two-stream spatiotemporal architecture for
reliable human action recognition on extremely low resolution (e.g., 12x16
pixel) videos. We provide an efficient method to extract spatial and temporal
features and to aggregate them into a robust feature representation for an
entire action video sequence. We also consider how to incorporate high
resolution videos during training in order to build better low resolution
action recognition models. We evaluate on two publicly-available datasets,
showing significant improvements over the state-of-the-art.Comment: 9 pagers, 5 figures, published in WACV 201
DNA Barcoding analysis of seafood accuracy in Washington, D.C. restaurants
Indexación: Scopus.In Washington D.C., recent legislation authorizes citizens to test if products are properly represented and, if they are not, to bring a lawsuit for the benefit of the general public. Recent studies revealing the widespread phenomenon of seafood substitution across the United States make it a fertile area for consumer protection testing. DNA barcoding provides an accurate and cost-effective way to perform these tests, especially when tissue alone is available making species identification based on morphology impossible. In this study, we sequenced the 5' barcoding region of the Cytochrome Oxidase I gene for 12 samples of vertebrate and invertebrate food items across six restaurants in Washington, D.C. and used multiple analytical methods to make identifications. These samples included several ambiguous menu listings, sequences with little genetic variation among closely related species and one sequence with no available reference sequence. Despite these challenges, we were able to make identifications for all samples and found that 33% were potentially mislabeled. While we found a high degree of mislabeling, the errors involved closely related species and we did not identify egregious substitutions as have been found in other cities. This study highlights the efficacy of DNA barcoding and robust analyses in identifying seafood items for consumer protection.https://peerj.com/articles/3234
Automatic Estimation of Ice Bottom Surfaces from Radar Imagery
Ground-penetrating radar on planes and satellites now makes it practical to
collect 3D observations of the subsurface structure of the polar ice sheets,
providing crucial data for understanding and tracking global climate change.
But converting these noisy readings into useful observations is generally done
by hand, which is impractical at a continental scale. In this paper, we propose
a computer vision-based technique for extracting 3D ice-bottom surfaces by
viewing the task as an inference problem on a probabilistic graphical model. We
first generate a seed surface subject to a set of constraints, and then
incorporate additional sources of evidence to refine it via discrete energy
minimization. We evaluate the performance of the tracking algorithm on 7
topographic sequences (each with over 3000 radar images) collected from the
Canadian Arctic Archipelago with respect to human-labeled ground truth.Comment: 5 pages, 3 figures, published in ICIP 201
Ion beam sputter etching and deposition of fluoropolymers
Fluoropolymer etching and deposition techniques including thermal evaporation, RF sputtering, plasma polymerization, and ion beam sputtering are reviewed. Etching and deposition mechanism and material characteristics are discussed. Ion beam sputter etch rates for polytetrafluoroethylene (PTFE) were determined as a function of ion energy, current density and ion beam power density. Peel strengths were measured for epoxy bonds to various ion beam sputtered fluoropolymers. Coefficients of static and dynamic friction were measured for fluoropolymers deposited from ion bombarded PTFE
Identifying Predictive Metrics for Supervisory Control of Multiple Robots
In recent years, much research has focused on making possible single operator control of multiple robots. In these high workload situations, many questions arise including how many robots should be in the team, which autonomy levels should they employ, and when should these autonomy levels
change? To answer these questions, sets of metric classes should be identified that capture these aspects of the human-robot team. Such a set of metric classes should have three properties. First, it should contain the key performance parameters of the system. Second, it should identify the limitations of the agents in the system. Third, it should have predictive power. In this paper, we decompose a human-robot team consisting of a single human and multiple robots in an effort to identify such a set of metric classes.
We assess the ability of this set of metric classes to (a) predict the number of robots that should be in the team and (b) predict system effectiveness. We do so by comparing predictions with actual data from a user study, which is also described.This research was funded by MIT Lincoln Laboratory
A Predictive Model for Human-Unmanned Vehicle Systems : Final Report
Advances in automation are making it possible for a single operator to control multiple unmanned
vehicles (UVs). This capability is desirable in order to reduce the operational costs of human-UV systems
(HUVS), extend human capabilities, and improve system effectiveness. However, the high complexity
of these systems introduces many significant challenges to system designers. To help understand and
overcome these challenges, high-fidelity computational models of the HUVS must be developed. These
models should have two capabilities. First, they must be able to describe the behavior of the various
entities in the team, including both the human operator and the UVs in the team. Second, these models
must have the ability to predict how changes in the HUVS and its mission will alter the performance
characteristics of the system. In this report, we describe our work toward developing such a model. Via
user studies, we show that our model has the ability to describe the behavior of a HUVS consisting of a
single human operator and multiple independent UVs with homogeneous capabilities. We also evaluate
the model’s ability to predict how changes in the team size, the human-UV interface, the UV’s autonomy
levels, and operator strategies affect the system’s performance.Prepared for MIT Lincoln Laborator
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