Human Pose Estimation via Multi-Scale Intermediate Supervision Convolution Network

Zhuohao Mai, Xiao Hu, Shao-Hu Peng, Yunshan Wei
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引用次数: 3

Abstract

Human pose estimation is a technique for locating the key points of a human in the picture and video. It can be used in the fields of human-computer interaction, motion recognition, Character behavior analysis and so on. At present, the supervision information is a series of single-scale heat map without matching the multi-scale key points of ground truth while training the CNN model. This type of supervision makes it more likely that the predicted key points will deviate from the real position. To improve the prediction accuracy, this paper proposes a novel model named human pose estimation via multi-scale intermediate supervision convolution network. Heatmaps are generated on three scale which are determined by the standard deviation of 2D Gaussian distribution. Residual network model is composed of three stage using ResNet50 as the backbone network. Each stage includes a ResNet50 and three deconvolution layers. The output from ResNet50 in three stages corresponds to the heat maps annotation of large, medium and small sizes respectively, and the intermediate supervision is realized twice in the output of the first and second stages. In the test phase, the output from the last stage is used for calculating the final key point's coordinates by non-maximum suppression. To demonstrate effectiveness of our network, two benchmark datasets are used for training and testing: the key point detection subset of COCO dataset and MPII Human Pose dataset. The test result of PCK@0.1 reached 37.2% on the MPII validation dataset, which is 2.1% higher than other methods. The results of the mAP test on the COCO validation dataset reached 75.5%, an increase of 1.2% compared with other methods. The results indicate that the multi-scale relay supervised convolutional network model proposed in this paper can reduce the influence of the non-correspondence between the size of key points and the size of heatmap ground truth in human pose estimation, thus improving the accuracy and achieving better performance when the evaluation criteria are stricter.
基于多尺度中间监督卷积网络的人体姿态估计
人体姿态估计是一种在图像和视频中定位人体关键点的技术。它可以应用于人机交互、动作识别、人物行为分析等领域。目前,在训练CNN模型时,监管信息是一系列单比例尺的热图,没有匹配地面真值的多比例尺关键点。这种监管方式更容易使预测的关键点偏离实际位置。为了提高预测精度,本文提出了一种基于多尺度中间监督卷积网络的人体姿态估计模型。热图是由二维高斯分布的标准差决定的三个尺度生成的。残差网络模型以ResNet50为骨干网,分为三级。每个阶段包括一个ResNet50和三个反卷积层。ResNet50在三个阶段的输出分别对应大、中、小尺寸的热图标注,在第一阶段和第二阶段的输出中实现了两次中间监督。在测试阶段,最后阶段的输出通过非最大值抑制来计算最终关键点的坐标。为了证明我们的网络的有效性,使用两个基准数据集进行训练和测试:COCO数据集的关键点检测子集和MPII人体姿势数据集。PCK@0.1在MPII验证数据集上的测试结果达到37.2%,比其他方法提高了2.1%。在COCO验证数据集上的mAP测试结果达到75.5%,比其他方法提高了1.2%。结果表明,本文提出的多尺度中继监督卷积网络模型可以减少关键点大小与热图地真值大小不对应对人体姿态估计的影响,从而提高精度,在评估标准更严格的情况下获得更好的性能。
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