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Adaptive feature learning CNN for behavior recognition in crowd scene

机译:人群场景中行为识别的自适应特征学习CNN

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Learning and recognizing 3-dimension (3D) adaptive features are important for crowd scene understanding in video surveillance research. Deep learning architectures such as Convolutional Neural Networks (CNN) have recently shown much success in various computer vision applications. Existing approaches such as hand-crafted method and 2D-CNN architectures are widely used in adaptive feature representations on image data. However, learning dynamic and temporal features in 3D scale features in videos remains an open problem. In this study, we proposed a novel technique 3D-scale Convolutional Neural Network (3DS-CNN), based on the decomposition of 3D feature maps into 2D spatio and 2D temporal feature representations. Extensive experiments on hundreds of video scene were demonstrated on publicly available crowd datasets. Quantitative and qualitative evaluations indicate that the proposed model display superior performance when compared to baseline approaches. The mean average precision of 95.30% was recorded on WWW crowd dataset.
机译:学习和识别3维度(3D)自适应特征对于视频监控研究中的人群场景理解是重要的。诸如卷积神经网络(CNN)等深度学习架构最近在各种计算机视觉应用中取得了多大成功。现有方法,如手工制作方法和2D-CNN架构广泛用于图像数据的自适应特征表示中。但是,视频中的3D规模特征中的学习动态和时间特征仍然是一个打开的问题。在本研究中,基于3D特征映射的分解,提出了一种新颖的3D型卷积神经网络(3ds-CNN),该特征映射到2D时空和2D时间特征表示。在公开的人群数据集上证明了数百种视频场景的广泛实验。定量和定性评估表明,与基线方法相比,所提出的模型显示出卓越的性能。在www人群数据集中记录了95.30 %的平均平均精度。

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