Sacha Christophe Arnoud
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Publication
Featured researches published by Sacha Christophe Arnoud.
computer vision and pattern recognition | 2015
Yair Movshovitz-Attias; Qian Yu; Martin C. Stumpe; Vinay Damodar Shet; Sacha Christophe Arnoud; Liron Yatziv
Modern search engines receive large numbers of business related, local aware queries. Such queries are best answered using accurate, up-to-date, business listings, that contain representations of business categories. Creating such listings is a challenging task as businesses often change hands or close down. For businesses with street side locations one can leverage the abundance of street level imagery, such as Google Street View, to automate the process. However, while data is abundant, labeled data is not; the limiting factor is creation of large scale labeled training data. In this work, we utilize an ontology of geographical concepts to automatically propagate business category information and create a large, multi label, training dataset for fine grained storefront classification. Our learner, which is based on the GoogLeNet/Inception Deep Convolutional Network architecture and classifies 208 categories, achieves human level accuracy.
european conference on computer vision | 2016
Raymond W. Smith; Chunhui Gu; Dar-Shyang Lee; Huiyi Hu; Ranjith Unnikrishnan; Julian Ibarz; Sacha Christophe Arnoud; Sophia Lin
We introduce the French Street Name Signs (FSNS) Dataset consisting of more than a million images of street name signs cropped from Google Street View images of France. Each image contains several views of the same street name sign. Every image has normalized, title case folded ground-truth text as it would appear on a map. We believe that the FSNS dataset is large and complex enough to train a deep network of significant complexity to solve the street name extraction problem “end-to-end” or to explore the design trade-offs between a single complex engineered network and multiple sub-networks designed and trained to solve sub-problems. We present such an “end-to-end” network/graph for Tensor Flow and its results on the FSNS dataset.
international conference on learning representations | 2014
Ian J. Goodfellow; Yaroslav Bulatov; Julian Ibarz; Sacha Christophe Arnoud; Vinay Damodar Shet
Archive | 2012
Marco Zennaro; Kong man Cheung; Julian Ibarz; Liron Yatziv; Sacha Christophe Arnoud
Archive | 2014
Angelique Moscicki; Edison Tan; Sacha Christophe Arnoud; David John Abraham; Michael Crawford; Colin McMillen; Joseph Andrew McClain; Bryan Arthur Pendleton; Mark R. Russell; Luis Von Ahn
Archive | 2017
Liron Yatziv; Yair Movshovitz-Attias; Qian Yu; Martin C. Stumpe; Vinay Damodar Shet; Sacha Christophe Arnoud
arXiv: Computer Vision and Pattern Recognition | 2015
Qian Yu; Christian Szegedy; Martin C. Stumpe; Liron Yatziv; Vinay Damodar Shet; Julian Ibarz; Sacha Christophe Arnoud
Archive | 2015
Sacha Christophe Arnoud; Liron Yatziv
Archive | 2014
Sacha Christophe Arnoud; Angelique Moscicki; Edison Tan; David John Abraham; Michael Crawford
Archive | 2017
Qian Yu; Liron Yatziv; Martin C. Stumpe; Vinay Damodar Shet; Christian Szegedy; Dumitru Erhan; Sacha Christophe Arnoud