基于颜色直方图的数字图像视觉内容情感自动识别

Seyed Abdolreza Mohseni, H. Wu, J. Thom
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引用次数: 2

摘要

在自动情感识别系统中使用颜色直方图面临着不同的问题。其中一个重要的挑战是确定颜色直方图中适当数量的箱子,以尽可能少的计算实现最高的识别性能。本研究利用ARTphoto数据集对图像视觉内容(简称REVC)诱导的情感识别进行研究。22种不同的分类器在RGB(红、绿、蓝)和HSV(色调、饱和度、值)颜色空间中使用颜色直方图,跨越不同数量的bin,并将每种bin大小的总体性能与其他bin大小的性能进行比较。研究结果表明,随着颜色直方图中箱数的增加,REVC系统的总体灵敏度并没有提高。此外,本文还确定了在REVC系统中使用颜色直方图时,使用HSV颜色空间比使用RGB颜色空间的优势。此外,研究结果识别了RGB和HSV颜色空间中的最佳箱数,并使用方差分析(ANOVA)对实验数据进行了分析,发现在REVC系统中,HSV颜色空间中使用的最佳颜色直方图箱大小明显优于RGB颜色空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Recognition of Human Emotions Induced by Visual Contents of Digital Images Based on Color Histogram
Using color histograms in automatic emotion recognition systems faces different issues. One of the important challenges is to determine the appropriate number of bins in the color histogram to achieve the highest recognition performance possible with minimal computations. This research focuses on emotion recognition induced by visual contents of images, or REVC for short, using ARTphoto dataset. Twenty-two different classifiers are used with color histograms in both RGB (red, green, blue) and HSV (hue, saturation, value) color spaces across different numbers of bins, and overall performance of each bin size is compared with that of other bin sizes. The research findings show that the performance of REVC system does not improve in terms of overall sensitivity rate, when the number of bins in color histogram is increased. Moreover, this paper identifies the advantage of using HSV color space over RGB in using color histogram for REVC systems. Furthermore, findings recognize the optimum number of bins in both RGB and HSV color spaces, and ANOVA (analysis of variance) is used to analyze experimental data, which identifies the optimum color histogram bin size used for HSV color space is significantly better than that used for RGB color space in REVC systems.
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