Sequential data such as video are characterized by spatio-temporal redundancies. As of yet, few deep learning algorithms exploit them to decrease the often massive cost during inference. This work leverages correlations in video data to reduce the size and run-time cost of deep neural networks. Drawing upon the simplicity of the typically used ReLU activation function, we replace this function by dynamically updating masks. The resulting network is a simple chain of matrix multiplications and bias additions, which can be contracted into a single weight matrix and bias vector. Inference then reduces to an affine transformation of the input sample with these contracted parameters. We show that the method is akin to approximating the neural ne...
Retrieving visual object from a large-scale video dataset is one of multimedia research focuses but ...
Homography estimation is an important step in many computer vision problems. Recently, deep neural n...
Generative models have evolved immensely in the last few years. GAN-based video and image generation...
Sequential data such as video are characterized by spatio-temporal redundancies. As of yet, few deep...
Sequential data such as video are characterized by spatio-temporal redundancies. As of yet, few deep...
International audienceSingle-pixel imaging is a paradigm that enables the capture of an image from a...
In today’s era, software tools based on deep learning have made the people work easier to make credi...
The recent resurgence of neural networks, termed "Deep Learning", has led to a reinvigoration of the...
Although CNN has reached satisfactory performance in image-related tasks, using CNN to process video...
The privacy of individuals and entire countries is currently threatened by the widespread use of fac...
This work proposes a novel Deep Learning technique to increase the efficiency of currently available...
The last few years have brought advances in computer vision at an amazing pace, grounded on new find...
In the recent past, real-time video processing using state-of-the-art deep neural networks (DNN) has...
International audienceManipulated images and videos, i.e., deepfakes have become increasingly realis...
International audienceSingle-pixel imaging allows low cost cameras to be built for imaging modalitie...
Retrieving visual object from a large-scale video dataset is one of multimedia research focuses but ...
Homography estimation is an important step in many computer vision problems. Recently, deep neural n...
Generative models have evolved immensely in the last few years. GAN-based video and image generation...
Sequential data such as video are characterized by spatio-temporal redundancies. As of yet, few deep...
Sequential data such as video are characterized by spatio-temporal redundancies. As of yet, few deep...
International audienceSingle-pixel imaging is a paradigm that enables the capture of an image from a...
In today’s era, software tools based on deep learning have made the people work easier to make credi...
The recent resurgence of neural networks, termed "Deep Learning", has led to a reinvigoration of the...
Although CNN has reached satisfactory performance in image-related tasks, using CNN to process video...
The privacy of individuals and entire countries is currently threatened by the widespread use of fac...
This work proposes a novel Deep Learning technique to increase the efficiency of currently available...
The last few years have brought advances in computer vision at an amazing pace, grounded on new find...
In the recent past, real-time video processing using state-of-the-art deep neural networks (DNN) has...
International audienceManipulated images and videos, i.e., deepfakes have become increasingly realis...
International audienceSingle-pixel imaging allows low cost cameras to be built for imaging modalitie...
Retrieving visual object from a large-scale video dataset is one of multimedia research focuses but ...
Homography estimation is an important step in many computer vision problems. Recently, deep neural n...
Generative models have evolved immensely in the last few years. GAN-based video and image generation...