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基于深度信息和RGB图像的行为识别算法 被引量:16

Behavior Recognition Algorithm Based on Depth Information and RGB Image
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摘要 人体行为识别是计算机视觉领域的一个热点问题,然而目前大部分算法都是仅使用RGB或深度视频序列,很少将它们结合起来进行行为识别.由于它们都有各自的优点且信息是互补的,因此文中研究深度图像和RGB图像的特性,不仅提出两种鲁棒的深度图和RGB图像上的行为描述算法,而且将它们有效融合,进一步结合多个不同核函数的SVM分类器在具有挑战性的DHA数据集上对它们进行评估.大规模实验结果表明,文中提出的行为描述算法性能比一些最具代表性算法的性能更好.同时,深度数据和RGB图像融合后算法性能得到进一步提高,比单独使用深度数据或RGB图像的性能更好,且具有较好的区分性和鲁棒性. Human behavior recognition is a hot issue in computer vision. However, most of the existing algorithms only use RGB or depth video sequence, and few of them are combined for behavior recognition. Due to their own advantages and complementary information, the characteristics of depth images and RGB images are studied, and two kinds of robust descriptors and some fusion schemes for them are proposed in this paper. Then, the support vector machine classifiers with different kernels are adopted. Results of extensive experiments on the challenging DHA dataset show that the accuracies of the proposed descriptorsare higher than those of the state-of-the-art algorithms. Meanwhile, the performance of the algorithm with the combination of depth information and RGB is improved, and it is better than that of the algorithm with sole descriptor. Moreover, the proposed descriptors have strong robustness, discriminability and stability.
出处 《模式识别与人工智能》 EI CSCD 北大核心 2013年第8期722-728,共7页 Pattern Recognition and Artificial Intelligence
基金 国家自然科学基金资助项目(No.61202168,61201234)
关键词 行为识别 深度信息 RGB图像 支持向量机 Behavior Recognition, Depth Information, RGB Image, Support Vector Machine
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同被引文献110

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