Contemporary surveillance systems mainly use video cameras as their primary sensor. However, video cameras possess fundamental deficiencies, such as the inability to handle low-light environments, poor weather conditions, and concealing clothing. In contrast, radar devices are able to sense in pitchdark environments and to see through walls. In this paper, we investigate the use of micro-Doppler (MD) signatures retrieved from a low-power radar device to identify a set of persons based on their gait characteristics. To that end, we propose a robust feature learning approach based on deep convolutional neural networks. Given that we aim at providing a solution for a real-world problem, people are allowed to walk around freely in two different...
The micro-Doppler signals from moving objects contain useful information about their motions. This p...
The ability to detect the presence as well as classify the activities of individuals behind visually...
The micro-Doppler signals from moving objects contain useful information about their motions. This p...
The radar micro-Doppler (m-D) signature of human gait has already been used successfully for a few c...
The capability of sensors to identify individuals in a specific scenario is a topic of high relevanc...
Along with substantial advances in the area of image processing and, consequently, video-based surve...
Video cameras are arguably the world's most used sensors for surveillance systems. They give a highl...
For the first time identification of human individuals using micro-Doppler (m-D) features measured a...
Indoor human activity recognition is actively studied as part of creating various intelligent system...
Radar-based activity recognition is a problem that has been of great interest due to applications su...
This paper focuses on the classification of human gaits based on micro-Doppler signatures. The micro...
Many smart home applications rely on indoor human activity recognition. This challenge is currently ...
The ability to detect and analyze micro motions in human body is a crucial task in surveillance syst...
One of the desirable features in a ground surveillance radar is to provide information about what a ...
Obtaining a smart surveillance requires a sensing system that can capture accurate and detailed info...
The micro-Doppler signals from moving objects contain useful information about their motions. This p...
The ability to detect the presence as well as classify the activities of individuals behind visually...
The micro-Doppler signals from moving objects contain useful information about their motions. This p...
The radar micro-Doppler (m-D) signature of human gait has already been used successfully for a few c...
The capability of sensors to identify individuals in a specific scenario is a topic of high relevanc...
Along with substantial advances in the area of image processing and, consequently, video-based surve...
Video cameras are arguably the world's most used sensors for surveillance systems. They give a highl...
For the first time identification of human individuals using micro-Doppler (m-D) features measured a...
Indoor human activity recognition is actively studied as part of creating various intelligent system...
Radar-based activity recognition is a problem that has been of great interest due to applications su...
This paper focuses on the classification of human gaits based on micro-Doppler signatures. The micro...
Many smart home applications rely on indoor human activity recognition. This challenge is currently ...
The ability to detect and analyze micro motions in human body is a crucial task in surveillance syst...
One of the desirable features in a ground surveillance radar is to provide information about what a ...
Obtaining a smart surveillance requires a sensing system that can capture accurate and detailed info...
The micro-Doppler signals from moving objects contain useful information about their motions. This p...
The ability to detect the presence as well as classify the activities of individuals behind visually...
The micro-Doppler signals from moving objects contain useful information about their motions. This p...