自适应色彩判别图像分类

M. Nakajima, Yenwei Chen, X. Han
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引用次数: 1

摘要

图像的语义理解仍然是机器智能和统计学习领域的一个重要研究挑战。主要包括特征提取和分类两个步骤。本研究主要关注场景图像识别,其中颜色信息起着重要的作用。传统的图像颜色表示主要包括颜色分布(直方图)及其基于均匀量化颜色仓的统计信息。然而,对于特定的识别应用,如几种场景类型,一些量化的颜色可能永远不会出现在任何场景图像中,同时,其他量化颜色的细节变化包含了许多判别特征。因此,本研究提出使用学习策略对场景图像的颜色信息进行表征,产生自适应的颜色层次,并提取学习到的颜色层次的直方图进行图像表示。在我们的应用中,与均匀量化的常规RGB颜色相比,紧凑的(学习的)颜色级别可以更忠实地表示图像。实验结果表明,与传统的颜色直方图相比,该方法的识别率有很大提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive color discrimination for image classification
Semantic understanding of images remains an important research challenge in machine intelligence and statistical learning. It mainly includes two steps: feature extraction and classification. This study mainly focuses scene image recognition, where color information plays an important role. The conventional color representation of images mainly includes color distribution (histogram) and its statistical information based on uniformed quantization color bin. However, for a specific recognition application such several scene types, some quantized colors maybe never appear in any scene image, and at the same time the detail variation in other quantized colors include much discriminative features. Therefore, this study proposes to characterize the color information of scene images using a leaning strategy for producing adaptive color level, and extract the histogram of the learned color levels for image representation. With the proposed strategy, the compact (learned) color levels can represent the image in our application more faithful than the uniform quantized conventional RGB color. Experimental results show that the recognition rate with our proposed methods can be greatly improved compared to the conventional color histogram.
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