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Edgar Simo-Serra

Researcher at Waseda University

Publications -  71
Citations -  5558

Edgar Simo-Serra is an academic researcher from Waseda University. The author has contributed to research in topics: Computer science & Convolutional neural network. The author has an hindex of 20, co-authored 66 publications receiving 4152 citations. Previous affiliations of Edgar Simo-Serra include Polytechnic University of Catalonia & Spanish National Research Council.

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Globally and locally consistent image completion

TL;DR: This work presents a novel approach for image completion that results in images that are both locally and globally consistent, with a fully-convolutional neural network that can complete images of arbitrary resolutions by filling-in missing regions of any shape.
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Discriminative Learning of Deep Convolutional Feature Point Descriptors

TL;DR: This paper uses Convolutional Neural Networks to learn discriminant patch representations and in particular train a Siamese network with pairs of (non-)corresponding patches to develop 128-D descriptors whose euclidean distances reflect patch similarity and can be used as a drop-in replacement for any task involving SIFT.
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Let there be color!: joint end-to-end learning of global and local image priors for automatic image colorization with simultaneous classification

TL;DR: A novel technique to automatically colorize grayscale images that combines both global priors and local image features and can process images of any resolution, unlike most existing approaches based on CNN.
Proceedings ArticleDOI

Neuroaesthetics in fashion: Modeling the perception of fashionability

TL;DR: A Conditional Random Field model is proposed that jointly reasons about several fashionability factors such as thetype of outfit and garments the user is wearing, the type of the user, the photograph's setting, and the fashionability score, and is able to give rich feedback back to the user.
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Learning to simplify: fully convolutional networks for rough sketch cleanup

TL;DR: This paper presents a novel technique to simplify sketch drawings based on learning a series of convolution operators, which is able to process images of any dimensions and aspect ratio as input, and outputs a simplified sketch which has the same dimensions as the input image.