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A unified model of video-based human action categorization using Chaotic Quantum Swarm Intelligence on Intuitionistic fuzzy 3D Convolution Neural Network

机译:用混沌量子群智能在直觉模糊3D卷积神经网络中使用混沌量子群综合模型的统一模型

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In the contemporary surveillance schemes of Computer Vision, videos concerning human action categorization have become a predominant zone, involving Pattern Recognition tasks. Factually, most of the human actions comprise complex temporal information, and it is quite difficult to discover the diverse activities of humans precisely, in an unpredictable variety of environmental circumstances. A Deep Learning paradigm can tackle this issue, by providing additional capabilities to vision-based human action recognition. However, there are more complex challenges in extracting the spatio-temporal features, for instance, the presence of noise in videos and the highly vague feature points. This paper proposes a hybrid intelligent Intuitionistic Fuzzy 3D Convolution Neural Network that uses Chaotic Quantum Swarm Intelligence (CQSI-IFCNN), to optimize video-based human action categorization. Vagueness and ambiguity of input video frames are inherited by Intuitionistic Fuzzy networks in terms of membership, hesitation and non-membership components. By applying Chaotic Quantum Swarm Intelligence (CQSI), the learning parameters and error rates that occur in standard convolutional neural network are considerably reduced. The chaotic searching scheme is applied to overcome premature local optima in Quantum Swarm Intelligence. Therefore, this model produces optimized outcomes in Intuitionistic fuzzy 3D Convolutional Neural Networks, thus improving the categorization of human actions in videos. The Performance of CQSI-IFCNN is assessed by using the KTH and UCF Sports Action datasets. From the simulation outcomes, it is observed that CQSI-IFCNN has attained a higher rate of action categorization accuracy than standard CNN and PSO-CNN.
机译:在计算机视觉的当代监测方案中,有关人类行动分类的视频已成为一个主要的区域,涉及模式识别任务。事实上,大多数人类行为都包括复杂的时间信息,并且很难在不可预测的环境环境中恰当地发现人类的多样化活动。深入学习范式可以通过向基于视觉的人类行动识别提供额外的能力来解决这个问题。然而,在提取时空特征方面存在更复杂的挑战,例如,视频中的噪声和高度模糊的特征点。本文提出了一种混合智能直觉模糊3D卷积神经网络,其使用混沌量子群智能(CQSI-IFCNN),优化基于视频的人体行动分类。输入视频帧的模糊和歧义是通过在会员,犹豫和非成员资格组件方面的直观模糊网络继承。通过应用混沌量子群智能(CQSI),标准卷积神经网络中出现的学习参数和错误率显着降低。混沌搜索方案应用于克服Quantum群智能的早产本地Optima。因此,该模型在直觉模糊3D卷积神经网络中产生优化的结果,从而提高了视频中的人类动作的分类。通过使用KTH和UCF体育动作数据集来评估CQSI-IFCNN的性能。从仿真结果中,观察到CQSI-IFCNN达到比标准CNN和PSO-CNN更高的动作分类精度率。

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