In this paper a method capable of automatically classify radar signals of human hand-gestures exploiting the micro-Doppler signature is designed. In particular, the methodology focuses on the extraction of the Chebyshev moments from the cadence velocity diagram (CVD) of each recorded signal. The algorithm benefits from interesting properties of these moments such as the fact that they are defined on a discrete set and hence computed without approximations, as well as the symmetry property that allows to minimize the computational time. The experiments computed on the challenging real-recorded DopNet dataset show interesting results that confirm the effectiveness of the approach
One of the desirable features in a ground surveillance radar is to provide information about what a ...
This paper presents the results of time (autocorrelation) and time-frequency (spectrogram) analyses ...
This paper introduces the use of a Chebychev moments' based feature for micro-Doppler based Classifi...
In this paper a method capable of automatically classify radar signals of human hand-gestures exploi...
This paper deals with gesture recognition using a 77 GHz FMCW radar system based on the micro-Dopple...
Radar sensors have a new growing application area of dynamic hand gesture recognition. Traditionally...
Radar micro-Doppler signatures are powerful indicators of target movements and activities, enabling ...
Radar sensors have a new growing application area of dynamic hand gesture recognition. Traditionally...
Phase modulation induced by target micromotions introduces sidebands in the radar spectral signature...
Automatic target recognition based on features obtained from micro-Doppler signatures has a great po...
Phase modulation induced by target micro-motions introduces side-bands in the radar spectral signatu...
Radar sensors offer several advantages over optical sensors in the gesture recognition for remote co...
Modern radar technology has various types of applications and brings convenience to people from diff...
Recently, radar micro-Doppler signatures have been extensively utilized for hand gesture recognition...
Dynamic hand gesture recognition is of great importance for human-computer interaction. In this pape...
One of the desirable features in a ground surveillance radar is to provide information about what a ...
This paper presents the results of time (autocorrelation) and time-frequency (spectrogram) analyses ...
This paper introduces the use of a Chebychev moments' based feature for micro-Doppler based Classifi...
In this paper a method capable of automatically classify radar signals of human hand-gestures exploi...
This paper deals with gesture recognition using a 77 GHz FMCW radar system based on the micro-Dopple...
Radar sensors have a new growing application area of dynamic hand gesture recognition. Traditionally...
Radar micro-Doppler signatures are powerful indicators of target movements and activities, enabling ...
Radar sensors have a new growing application area of dynamic hand gesture recognition. Traditionally...
Phase modulation induced by target micromotions introduces sidebands in the radar spectral signature...
Automatic target recognition based on features obtained from micro-Doppler signatures has a great po...
Phase modulation induced by target micro-motions introduces side-bands in the radar spectral signatu...
Radar sensors offer several advantages over optical sensors in the gesture recognition for remote co...
Modern radar technology has various types of applications and brings convenience to people from diff...
Recently, radar micro-Doppler signatures have been extensively utilized for hand gesture recognition...
Dynamic hand gesture recognition is of great importance for human-computer interaction. In this pape...
One of the desirable features in a ground surveillance radar is to provide information about what a ...
This paper presents the results of time (autocorrelation) and time-frequency (spectrogram) analyses ...
This paper introduces the use of a Chebychev moments' based feature for micro-Doppler based Classifi...