DeepSketch: Deep convolutional neural networks for sketch recognition and similarity search

Omar Seddati, S. Dupont, S. Mahmoudi
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引用次数: 57

Abstract

In this paper, we present a system for sketch classification and similarity search. We used deep convolution neural networks (ConvNets), state of the art in the field of image recognition. They enable both classification and medium/highlevel features extraction. We make use of ConvNets features as a basis for similarity search using k-Nearest Neighbors (kNN). Evaluation are performed on the TU-Berlin benchmark. Our main contributions are threefold: first, we use ConvNets in contrast to most previous approaches based essentially on hand crafted features. Secondly, we propose a ConvNet that is both more accurate and lighter/faster than the two only previous attempts at making use of ConvNets for handsketch recognition. We reached an accuracy of 75.42%. Third, we shown that similarly to their application on natural images, ConvNets allow the extraction of medium-level and high-level features (depending on the depth) which can be used for similarity search.1
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DeepSketch:用于草图识别和相似性搜索的深度卷积神经网络
本文提出了一个素描分类与相似度搜索系统。我们使用了深度卷积神经网络(ConvNets),这是图像识别领域的最新技术。它们支持分类和中/高级特征提取。我们利用卷积神经网络的特征作为使用k-最近邻(kNN)进行相似性搜索的基础。评估是在TU-Berlin基准上进行的。我们的主要贡献有三个方面:首先,我们使用卷积神经网络,而不是之前大多数基于手工制作特征的方法。其次,我们提出了一种卷积神经网络,它比之前两次使用卷积神经网络进行手绘识别的尝试更准确,更轻/更快。我们达到了75.42%的准确率。第三,我们表明,与自然图像的应用类似,卷积神经网络允许提取中级和高级特征(取决于深度),这些特征可用于相似性搜索
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