学习并设计图像分类中稀疏编码的特征

Dung A. Doan, Ngoc-Trung Tran, Dinh-Phong Vo, H. Le
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引用次数: 0

摘要

在一些视觉识别和多媒体挑战的标准实现中选择了大量设计特性(SIFT、SURF或DAISY)。这些特性的强大之处在于它们不受旋转、缩放和平移的影响。然而,深度学习的最新趋势指出,数据驱动的特征学习在某些任务中执行更好的设计特征,因为它们可以捕获图像的全局(通过多层网络)或局部间结构(卷积网络)。我们认为,结合这两种类型的特征可以显著提高视觉对象识别性能。本文提出了一种利用稀疏编码和融合学习特征和设计特征来构建描述性码字的框架。对Caltech-101和15个场景的评估验证了我们的论点,与最近的方法相比,结果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learned and designed features for sparse coding in image classification
There is an amount of designed features (SIFT, SURF, or DAISY) which has been chosen in the standard implementation of some visual recognition and multimedia challenges. The power of these features lie on their invariance designed against rotation, scaling, and translation. Recent trends in deep learning, however, have pointed out that data-driven features learning performs better designed features in some tasks, since they can capture the global (via multi-layers network) or inter-local structures (convolutional network) of images. We argue that combining the two types of features can significantly improve visual object recognition performance. We propose in this paper a framework that uses sparse coding and the fusion of learned and designed features in order to build descriptive codewords. Evaluations on Caltech-101 and 15 Scenes validates our argument, with a better result compared with recent approaches.
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