基于PBL-McRBFN方法的压缩域人体动作识别

B. Rangarajan, Venkatesh Babu Radhakrishnan
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引用次数: 4

摘要

人类行为的巨大变化给计算机视觉研究带来了重大挑战。设计了几种算法来解决这些挑战。独立的算法,有助于解决挑战,除了执行更快,更有效的方式。在本文中,我们提出了一种基于人类认知启发的基于投影的学习方法,用于H.264/AVC压缩域中的独立于人的人类动作识别,并演示了一种基于PBL-McRBFN的方法,以帮助将机器学习算法提升到一个新的水平。在此,我们采用基于梯度图像的特征提取过程,提取运动矢量和量化参数,并对其进行临时研究,形成若干组图像(Group of Pictures, GoP)。然后分别考虑两个不同基准数据集的GoP,并使用独立于人的人类行为识别对结果进行分类。采用基于投影的元认知径向基函数网络(PBL-McRBFN)学习算法研究了函数关系,该算法具有认知和元认知两部分。认知成分是径向基函数网络,而元认知成分是自我调节的。McC模仿人类的认知,比如学习,以达到更好的表现。该方法可以处理压缩视频域的稀疏信息,并提供比其他像素域更高的精度。使用PBL-McRBFN的特征提取过程的性能达到了90%以上的准确率,这促进了所提出的高速动作识别算法的速度。我们进行了20次随机试验,以了解GoP的性能。结果还与机器学习文献中其他知名分类器进行了比较。
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Human action recognition in compressed domain using PBL-McRBFN approach
Large variations in human actions lead to major challenges in computer vision research. Several algorithms are designed to solve the challenges. Algorithms that stand apart, help in solving the challenge in addition to performing faster and efficient manner. In this paper, we propose a human cognition inspired projection based learning for person-independent human action recognition in the H.264/AVC compressed domain and demonstrate a PBL-McRBFN based approach to help take the machine learning algorithms to the next level. Here, we use gradient image based feature extraction process where the motion vectors and quantization parameters are extracted and these are studied temporally to form several Group of Pictures (GoP). The GoP is then considered individually for two different bench mark data sets and the results are classified using person independent human action recognition. The functional relationship is studied using Projection Based Learning algorithm of the Meta-cognitive Radial Basis Function Network (PBL-McRBFN) which has a cognitive and meta-cognitive component. The cognitive component is a radial basis function network while the Meta-Cognitive Component(MCC) employs self regulation. The McC emulates human cognition like learning to achieve better performance. Performance of the proposed approach can handle sparse information in compressed video domain and provides more accuracy than other pixel domain counterparts. Performance of the feature extraction process achieved more than 90% accuracy using the PBL-McRBFN which catalyzes the speed of the proposed high speed action recognition algorithm. We have conducted twenty random trials to find the performance in GoP. The results are also compared with other well known classifiers in machine learning literature.
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