Novel Robust and Invariant Feature Extraction by Spatio-temporal Decomposition of Images

Shiva Kumar Korikana, V. Chandrasekaran
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引用次数: 1

Abstract

Feature extraction is a major step in all pattern recognition and image processing applications. Conventional feature extraction methods when used for extracting physical quantities like mean, entropy etc. are not suitable for automation due to complexity of the feature extraction process. In this paper we propose a simple and novel feature extraction technique that decomposes the original image into a series of sparse images using a time varying selection criterion on the spatial plane. Features are then extracted from each of these sparse images. The feature set, when carefully analyzed and interpreted, is seen to perform as well or even better than their conventional counterparts for recognition and classification. The technique is demonstrated to be robust against noise and results in highly discriminatory features. Also, in this paper the technique to obtain shift invariant features is proposed.
基于图像时空分解的鲁棒不变特征提取方法
特征提取是所有模式识别和图像处理应用的重要步骤。传统的特征提取方法在提取平均值、熵等物理量时,由于特征提取过程的复杂性,不适合自动化。本文提出了一种简单新颖的特征提取技术,利用空间平面上的时变选择准则将原始图像分解为一系列稀疏图像。然后从这些稀疏图像中提取特征。经过仔细分析和解释,特征集在识别和分类方面的表现与传统特征集一样好,甚至更好。该技术被证明对噪声具有鲁棒性,并产生高度歧视性的特征。此外,本文还提出了一种获取平移不变特征的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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