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Dive into the research topics where Soumith Chintala is active.

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Featured researches published by Soumith Chintala.


computer vision and pattern recognition | 2013

Pedestrian Detection with Unsupervised Multi-stage Feature Learning

Pierre Sermanet; Koray Kavukcuoglu; Soumith Chintala; Yann LeCun

Pedestrian detection is a problem of considerable practical interest. Adding to the list of successful applications of deep learning methods to vision, we report state-of-the-art and competitive results on all major pedestrian datasets with a convolutional network model. The model uses a few new twists, such as multi-stage features, connections that skip layers to integrate global shape information with local distinctive motif information, and an unsupervised method based on convolutional sparse coding to pre-train the filters at each stage.


Neural Computation | 2016

A mathematical motivation for complex-valued convolutional networks

Mark Tygert; Joan Bruna; Soumith Chintala; Yann LeCun; Serkan Piantino; Arthur Szlam

A complex-valued convolutional network (convnet) implements the repeated application of the following composition of three operations, recursively applying the composition to an input vector of nonnegative real numbers: (1) convolution with complex-valued vectors, followed by (2) taking the absolute value of every entry of the resulting vectors, followed by (3) local averaging. For processing real-valued random vectors, complex-valued convnets can be viewed as data-driven multiscale windowed power spectra, data-driven multiscale windowed absolute spectra, data-driven multiwavelet absolute values, or (in their most general configuration) data-driven nonlinear multiwavelet packets. Indeed, complex-valued convnets can calculate multiscale windowed spectra when the convnet filters are windowed complex-valued exponentials. Standard real-valued convnets, using rectified linear units (ReLUs), sigmoidal (e.g., logistic or tanh) nonlinearities, or max pooling, for example, do not obviously exhibit the same exact correspondence with data-driven wavelets (whereas for complex-valued convnets, the correspondence is much more than just a vague analogy). Courtesy of the exact correspondence, the remarkably rich and rigorous body of mathematical analysis for wavelets applies directly to (complex-valued) convnets.


computer vision and pattern recognition | 2017

Discovering Causal Signals in Images

David Lopez-Paz; Robert Nishihara; Soumith Chintala; Bernhard Schölkopf; Léon Bottou

This paper establishes the existence of observable footprints that reveal the causal dispositions of the object categories appearing in collections of images. We achieve this goal in two steps. First, we take a learning approach to observational causal discovery, and build a classifier that achieves state-of-the-art performance on finding the causal direction between pairs of random variables, given samples from their joint distribution. Second, we use our causal direction classifier to effectively distinguish between features of objects and features of their contexts in collections of static images. Our experiments demonstrate the existence of a relation between the direction of causality and the difference between objects and their contexts, and by the same token, the existence of observable signals that reveal the causal dispositions of objects.


international conference on pattern recognition | 2012

Convolutional neural networks applied to house numbers digit classification

Pierre Sermanet; Soumith Chintala; Yann LeCun


international conference on machine learning | 2017

Wasserstein Generative Adversarial Networks.

Martin Arjovsky; Soumith Chintala; Léon Bottou


british machine vision conference | 2016

A MultiPath Network for Object Detection

Sergey Zagoruyko; Adam Lerer; Tsung-Yi Lin; Pedro H. O. Pinheiro; Sam Gross; Soumith Chintala; Piotr Dollár


neural information processing systems | 2016

Semantic Segmentation using Adversarial Networks

Pauline Luc; Camille Couprie; Soumith Chintala; Jakob J. Verbeek


arXiv: Artificial Intelligence | 2016

Episodic Exploration for Deep Deterministic Policies: An Application to StarCraft Micromanagement Tasks.

Nicolas Usunier; Gabriel Synnaeve; Zeming Lin; Soumith Chintala


arXiv: Learning | 2017

TorchCraft: a Library for Machine Learning Research on Real-Time Strategy Games

Gabriel Synnaeve; Nantas Nardelli; Alex Auvolat; Soumith Chintala; Timothee Lacroix; Zeming Lin; Florian Richoux; Nicolas Usunier


arXiv: Learning | 2015

A theoretical argument for complex-valued convolutional networks

Joan Bruna; Soumith Chintala; Yann LeCun; Serkan Piantino; Arthur Szlam; Mark Tygert

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