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A human pose estimation algorithm based on the integration of improved convolutional neural networks and multi-level graph structure constrained model

机译:一种基于改进卷积神经网络的集成的人姿势估计算法和多级图结构约束

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摘要

This work introduces a novel convolutional feature for the task of human pose estimation, which is a framework of fusing a convolutional neural network into a multi-level graph structure model so as to improve the pose estimation results from body-part detection and human spatial structure. In the stage of part detection, the probability vectors corresponding to human body parts in the whole image are analyzed by a convolutional neural network. And then, a novel multi-level graph structure model is designed in this method, which contains the whole body, human body parts and joints, and realizes the coarse-to-fine establishment of a more constrained human spatiTal constraint model from levels of the structures, the edges, to the pixels. The obtained probability vectors are put into the multi-level graph structure model to compute the location coordinates for each joint, successfully achieving a framework of combining the deep learning network and the multi-level graph structure model. A large number of qualitative and quantitative experimental results show that compared with other state-of-art methods, the integration of the deep learning network and the multi-level pictorial structure model can improve the accuracy of human pose estimation to a greater extent.
机译:这项工作介绍了人类姿势估计任务的新颖卷积特征,这是将卷积神经网络融入多级图形结构模型的框架,以便改善身体部位检测和人体空间结构的姿态估计结果。在部件检测的阶段,通过卷积神经网络分析了与整个图像中的人体部分相对应的概率向量。然后,在该方法中设计了一种新型的多级图形结构模型,该方法包含全身,人体部件和关节,并实现了从中水平的更受限制的人类季节性约束模型的粗糙建立。结构,边缘到像素。所获得的概率向量被放入多级图形结构模型中,以计算每个关节的位置坐标,成功实现了组合深度学习网络和多级图形结构模型的框架。大量定性和定量的实验结果表明,与其他最先进的方法相比,深度学习网络的集成和多级图形结构模型可以在更大程度上提高人类姿态估计的准确性。

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