Radar micro-Doppler signatures are powerful indicators of target movements and activities, enabling the extraction of valuable information about various objects' internal and external dynamics. Consequently, classifying these signatures has become crucial in numerous applications, ranging from target recognition in surveillance, to biomedical sensing and interaction with smart sensors. In this thesis, an evaluation of classification performances for a wide variety of orthogonal moments, when applied to micro-Doppler classification problems, is presented. A pipeline is proposed to evaluate all moments commonly used in image processing, but not routinely employed in radar-based classification.The evaluation results are compared with other sta...
This paper focuses on the classification of human gaits based on micro-Doppler signatures. The micro...
The purpose of this paper is to present an experimental trial carried out at the Defence Academy of ...
In recent years, Doppler radar has been used as a sensing modality for human gait recognition, due t...
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...
Reliable micro-Doppler signature classification requires the use of robust features describing uniqu...
Micro-Doppler signatures can be used not only to recognize different targets, such as vehicles, heli...
Classification of personnel targets by micro-Doppler signatures has received a growing interest in r...
In this paper a method capable of automatically classify radar signals of human hand-gestures exploi...
One of the desirable features in a ground surveillance radar is to provide information about what a ...
Convolutional neural networks have often been proposed for processing radar Micro-Doppler signatures...
In this paper, the classification of human activity from micro-Doppler spectrograms measured by a ra...
This paper focuses on the classification of human gaits based on micro-Doppler signatures. The micro...
The purpose of this paper is to present an experimental trial carried out at the Defence Academy of ...
In recent years, Doppler radar has been used as a sensing modality for human gait recognition, due t...
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...
Reliable micro-Doppler signature classification requires the use of robust features describing uniqu...
Micro-Doppler signatures can be used not only to recognize different targets, such as vehicles, heli...
Classification of personnel targets by micro-Doppler signatures has received a growing interest in r...
In this paper a method capable of automatically classify radar signals of human hand-gestures exploi...
One of the desirable features in a ground surveillance radar is to provide information about what a ...
Convolutional neural networks have often been proposed for processing radar Micro-Doppler signatures...
In this paper, the classification of human activity from micro-Doppler spectrograms measured by a ra...
This paper focuses on the classification of human gaits based on micro-Doppler signatures. The micro...
The purpose of this paper is to present an experimental trial carried out at the Defence Academy of ...
In recent years, Doppler radar has been used as a sensing modality for human gait recognition, due t...