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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Recognizing actions in images by fusing multiple body structure cues
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Recognizing actions in images by fusing multiple body structure cues

机译:通过融合多个身体结构提示识别图像中的操作

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摘要

Although Convolutional Neural Networks (CNNs) have made substantial improvements in many computer vision tasks, there remains room for improvements in image-based action recognition due to the limited capability to exploit the body structure information.In this work, we propose a unified deep model to explicitly explore body structure information and fuse multiple body structure cues for robust action recognition in images.In order to fully explore the body structure information, we design the Body Structure Exploration sub-network.It generates two novel body structure cues, Structural Body Parts and Limb Angle Descriptor, which capture structure information of human bodies from the global and local perspectives respectively. And then, we design the Action Classification sub-network to fuse the predictions from multiple body structure cues to obtain precise results. Moreover, we integrate the two sub-networks into a unified model by sharing the bottom convolutional layers, which improves the computational efficiency in both training and testing stages. We comprehensively evaluate our network on the challenging image-based human action datasets, Pascal VOC 2012 Action and Stanford40. Our approach achieves 93.5% and 93.8% mAP respectively, which outperforms all recent approaches in this field. (C) 2020 Elsevier Ltd. All rights reserved.
机译:虽然卷积神经网络(CNNS)在许多计算机视觉任务中进行了大量改进,但由于利用身体结构信息的能力有限,仍有基于图像的动作识别的改进的空间。在这项工作中,我们提出了一个统一的深层模型为了明确探索身体结构信息和熔断器多体结构提示,用于图像中的鲁棒动作识别。为了完全探索身体结构信息,我们设计身体结构探索子网络。它产生两种新型车身结构线索,结构体部位和肢体角度描述符,分别从全球和局部观点捕获人体的结构信息。然后,我们设计动作分类子网以融合来自多个身体结构提示的预测,以获得精确的结果。此外,我们通过共享底部卷积层将两个子网集成到统一模型中,这提高了训练和测试阶段的计算效率。我们全面评估了我们在挑战的基于形象的人类行动数据集,Pascal VOC 2012行动和斯坦福德的网络上的网络。我们的方法分别达到93.5%和93.8%的地图,这优于该领域的最近方法。 (c)2020 elestvier有限公司保留所有权利。

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