International audienceA wide variety of approaches have been proposed for pedestrian detection in the last decay and it still remains an open challenge due to its outstanding importance in the field of automotive. In recent years, deep learning classification methods, in particular convolutional neural networks, combined with multi-modality images applied on different fusion schemes have achieved great performances in computer vision tasks. For the pedestrian recognition task, the late-fusion scheme outperforms the early and intermediate integration of modalities. In this paper, we focus on improving and optimizing the late-fusion scheme for pedestrian classification on the Daimler stereo vision data set. We propose different training metho...
This Ph.D. thesis is the result of my research work in the machine learning (particularly in Deep Le...
Gait recognition is a noncontact biometric procedure that determines the identity or health status o...
One common problem in vehicle and pedestrian detection algorithms is the mis-classification of motor...
International audienceA wide variety of approaches have been proposed for pedestrian detection in th...
International audienceIn spite of the large amount of existent methods, pedestrian detection is stil...
International audienceThe combination of multi-modal image fusion schemes with deep learning classif...
International audienceLate fusion schemes with deep learning classification patterns set up with mul...
International audienceIn recent years, deep learning classification methods, specially Convolutional...
International audiencePedestrian detection is a highly debated issue in the scientific community due...
Pedestrian detection is at the core of autonomous road vehicle navigation systems as they allow a ve...
The investigation of a deep neural network for pedestrian classification using transfer learning met...
Compared with other applications in computer vision, convolutional neural networks (CNNs) have under...
This Ph.D. thesis is the result of my research work in the machine learning (particularly in Deep Le...
Gait recognition is a noncontact biometric procedure that determines the identity or health status o...
One common problem in vehicle and pedestrian detection algorithms is the mis-classification of motor...
International audienceA wide variety of approaches have been proposed for pedestrian detection in th...
International audienceIn spite of the large amount of existent methods, pedestrian detection is stil...
International audienceThe combination of multi-modal image fusion schemes with deep learning classif...
International audienceLate fusion schemes with deep learning classification patterns set up with mul...
International audienceIn recent years, deep learning classification methods, specially Convolutional...
International audiencePedestrian detection is a highly debated issue in the scientific community due...
Pedestrian detection is at the core of autonomous road vehicle navigation systems as they allow a ve...
The investigation of a deep neural network for pedestrian classification using transfer learning met...
Compared with other applications in computer vision, convolutional neural networks (CNNs) have under...
This Ph.D. thesis is the result of my research work in the machine learning (particularly in Deep Le...
Gait recognition is a noncontact biometric procedure that determines the identity or health status o...
One common problem in vehicle and pedestrian detection algorithms is the mis-classification of motor...