<正>For many image classification tasks,color histogram is usually employed as an important"signature"to describe the color distribution of the image and infer the image content.However,most traditional color histograms cannot achieve satisfactory results in many image classification systems.In order to improve the accuracy and reduce the computational complexity of the classification task,an information-based color feature representation is proposed in this paper.The mutual information between the feature and the class label is adopted to evaluate the discriminative power of the feature.A novel quantization scheme is presented,which removes the redundant color components and combines the adjacent components together to generate a new feature to maximize the discriminative ability.An iterative algorithm is performed to derive the color space quantization and color feature generation.In order to illustrate the effectiveness of the proposed color representation,a specific image classification task,i.e.,differentiating the adult images from benign ones,is employed.Experimental results show that our color feature achieves better classification performance and better efficiency compared with the traditional color histogram.
For many image classification tasks, color histogram is usually employed as an important "signature" to describe the color distribution of the image and infer the image content. However, most traditional color histograms cannot achieve satisfactory results in many image classification systems. In order to improve the accuracy and reduce the computational complexity of the classification task, an information-based color feature representation is proposed in this paper. The mutual information between the feature and the class label is adopted to evaluate the discriminative power of the feature. A novel quantization scheme is presented, which removes the redundant color components and combines the adjacent components together to generate a new feature to maximize the discriminative ability. An iterative algorithm is performed to derive the color space quantization and color feature generation. In order to illustrate the effectiveness of the proposed color representation, a specific image classification task, i.e., differentiating the adult images from benign ones, is employed. Experimental results show that our color feature achieves better classification performance and better efficiency compared with the traditional color histogram.