Human recognition is an important part of perception systems, such as those used in autonomous vehicles or robots. These systems often use deep neural networks for this purpose, which rely on large amounts of data that ideally cover various situations, movements, visual appearances, and interactions. However, obtaining such data is typically complex and expensive. In addition to raw data, labels are required to create training data for supervised learning. Thus, manual annotation of bounding boxes, keypoints, orientations, or actions performed is frequently necessary. This work addresses whether the laborious acquisition and creation of data can be simplified through targeted simulation. If data are generated in a simulation, information su...
This paper introduces the usage of simulated images fortraining convolutional neural networks for ob...
This thesis addresses the topic of visual person detection and pose estimation. While these tasks ar...
Autonomous vehicles have the potential to completely upend the way we transport today, however deplo...
Human recognition is an important part of perception systems, such as those used in autonomous vehic...
Recognizing human actions, reliably inferring their meaning and being able to potentially exchange m...
There are several confounding factors that can reduce the accuracy of gait recognition systems. Thes...
Human detection and pose estimation are essential components for any artificial system responsive to...
Machine learning is an important multidisciplinary field of research, which aims to construct models...
Due to the resurrection of data-hungry models (such as deep convolutional neural nets), there is an ...
Deep learning-based object detection and pose estimation methods need a large number of synthetic da...
Figures 2.2 through 2.7, and 2.9 through 2.11 were removed for copyright reasons. Figures 2.8, and 2...
The past decade was marked by significant progress in the field of artificial intelligence and stati...
Over the last decade, researchers have made significant progress toward training and understanding l...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
State-of-the-art object recognition systems, and computer vision methods in general, are getting bet...
This paper introduces the usage of simulated images fortraining convolutional neural networks for ob...
This thesis addresses the topic of visual person detection and pose estimation. While these tasks ar...
Autonomous vehicles have the potential to completely upend the way we transport today, however deplo...
Human recognition is an important part of perception systems, such as those used in autonomous vehic...
Recognizing human actions, reliably inferring their meaning and being able to potentially exchange m...
There are several confounding factors that can reduce the accuracy of gait recognition systems. Thes...
Human detection and pose estimation are essential components for any artificial system responsive to...
Machine learning is an important multidisciplinary field of research, which aims to construct models...
Due to the resurrection of data-hungry models (such as deep convolutional neural nets), there is an ...
Deep learning-based object detection and pose estimation methods need a large number of synthetic da...
Figures 2.2 through 2.7, and 2.9 through 2.11 were removed for copyright reasons. Figures 2.8, and 2...
The past decade was marked by significant progress in the field of artificial intelligence and stati...
Over the last decade, researchers have made significant progress toward training and understanding l...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
State-of-the-art object recognition systems, and computer vision methods in general, are getting bet...
This paper introduces the usage of simulated images fortraining convolutional neural networks for ob...
This thesis addresses the topic of visual person detection and pose estimation. While these tasks ar...
Autonomous vehicles have the potential to completely upend the way we transport today, however deplo...