International audienceTraining and running deep neural networks (NNs) often demands a lot of computation and energy-intensive specialized hardware (e.g. GPU, TPU...). One way to reduce the computation and power cost is to use binary weight NNs, but these are hard to train because the sign function has a non-smooth gradient. We present a model based on Mathematical Morphology (MM), which can binarize ConvNets without losing performance under certain conditions, but these conditions may not be easy to satisfy in real-world scenarios. To solve this, we propose two new approximation methods and develop a robust theoretical framework for ConvNets binarization using MM. We propose as well regularization losses to improve the optimization. We empi...
Thesis (Ph.D.)--University of Washington, 2020The recent renaissance of deep neural networks has lea...
Binary neural networks (BNNs) have attracted broad research interest due to their efficient storage ...
We present a method to train self-binarizing neural networks, that is, networks that evolve their we...
Neural networks and particularly Deep learning have been comparatively little studied from the theor...
International audienceIn the last ten years, Convolutional Neural Networks (CNNs) have formed the ba...
International audienceThe recent impressive results of deep learning-based methods on computer visio...
Binary neural networks (BNNs) are an extremely promising method for reducing deep neural networks’ c...
Morphological neural networks (MNNs) can be characterized as a class of artificial neural networks t...
Binarization of feature representation is critical for Binarized Neural Networks (BNNs). Currently, ...
Network binarization (i.e., binary neural networks, BNNs) can efficiently compress deep neural netwo...
Mathematical morphology is a theory and technique applied to collect features like geometric and top...
A classical approach to designing binary image operators is Mathematical Morphology (MM). We propose...
AbstractThis paper introduces an efficient training algorithm for a dendrite morphological neural ne...
As deep neural networks grow larger, they suffer from a huge number of weights, and thus reducing th...
International audienceMathematical Morphology (MM) is a well-established discipline whose aim is mai...
Thesis (Ph.D.)--University of Washington, 2020The recent renaissance of deep neural networks has lea...
Binary neural networks (BNNs) have attracted broad research interest due to their efficient storage ...
We present a method to train self-binarizing neural networks, that is, networks that evolve their we...
Neural networks and particularly Deep learning have been comparatively little studied from the theor...
International audienceIn the last ten years, Convolutional Neural Networks (CNNs) have formed the ba...
International audienceThe recent impressive results of deep learning-based methods on computer visio...
Binary neural networks (BNNs) are an extremely promising method for reducing deep neural networks’ c...
Morphological neural networks (MNNs) can be characterized as a class of artificial neural networks t...
Binarization of feature representation is critical for Binarized Neural Networks (BNNs). Currently, ...
Network binarization (i.e., binary neural networks, BNNs) can efficiently compress deep neural netwo...
Mathematical morphology is a theory and technique applied to collect features like geometric and top...
A classical approach to designing binary image operators is Mathematical Morphology (MM). We propose...
AbstractThis paper introduces an efficient training algorithm for a dendrite morphological neural ne...
As deep neural networks grow larger, they suffer from a huge number of weights, and thus reducing th...
International audienceMathematical Morphology (MM) is a well-established discipline whose aim is mai...
Thesis (Ph.D.)--University of Washington, 2020The recent renaissance of deep neural networks has lea...
Binary neural networks (BNNs) have attracted broad research interest due to their efficient storage ...
We present a method to train self-binarizing neural networks, that is, networks that evolve their we...