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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Genetic eigenhand selection for handshape classification based on compact hand extraction
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Genetic eigenhand selection for handshape classification based on compact hand extraction

机译:基于紧凑型手提取的遗传特征手选择用于手形分类

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摘要

This study proposes compact hand extraction to assist in computerized handshape recognition. First, we devised an image enhancement technique based on singular value decomposition to remove dark backgrounds by reserving the skin color pixels of a hand image. Then, the polynomial approximation YC_bC_r color model was used to extract the hand. After alignment, we applied lighting compensation to the adaptable singular value decomposition. Finally, a hierarchical pyramid sampling algorithm was used to reduce the impact of variations in handshape. We also constructed a self-eigenhand recognizer with genetic algorithms (GA) for selecting discriminant eigenvector subsets for classification. Although our approach maximizes the differences in hand images for various handshapes, it also minimizes variations in lighting and pose for the same handshape. Experimental results for images from our database and a live sequence showed that our method functioned more efficiently than conventional ones that do not use compact hand extraction against complex scenes. For the 768 images included in inside testing, our classification system achieved an AAR of 99.55% and an FAR of 0.0001 %. For live testing, the classification system achieved an accuracy rate of 91.7%, with an error rate of 8.3%. Regarding speed, our system was faster than conventional ones. Our images size was 160 ×120 pixels, operating at an average processing time of less than 1 s per handshape (using an AMD64 Athlon CPU 2.0 GHz personal computer).
机译:这项研究提出紧凑的手提取,以帮助计算机进行手形识别。首先,我们设计了一种基于奇异值分解的图像增强技术,以通过保留手部图像的肤色像素来去除深色背景。然后,使用多项式近似YC_bC_r颜色模型来提取手。对齐后,我们将照明补偿应用于自适应奇异值分解。最后,使用分层金字塔采样算法来减少手形变化的影响。我们还构建了具有遗传算法(GA)的自本征手识别器,用于选择可识别的本征向量子集进行分类。尽管我们的方法最大程度地增强了各种手形的手部图像差异,但它也使相同手形的光照和姿势变化最小化。来自我们的数据库和实时序列的图像的实验结果表明,与不对复杂场景使用紧凑的手部提取的传统方法相比,我们的方法更有效。对于内部测试中包含的768张图像,我们的分类系统的AAR为99.55%,FAR为0.0001%。对于实时测试,分类系统的准确率为91.7%,错误率为8.3%。关于速度,我们的系统比传统系统要快。我们的图像大小为160×120像素,每个手形的平均处理时间少于1秒(使用AMD64 Athlon CPU 2.0 GHz个人计算机)。

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