基于TensorFlow的人体关节关键点检测

Anuj Grover, D. Arora, Anant Grover
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引用次数: 0

摘要

人体关节关键点检测是对人体所有重要关节进行发现和检测的过程。它以RGB图像作为输入,给出一个关键点列表作为输出。可用于单人人体关节检测,也可用于多人人体关节检测。用于检测人体关节的各种架构可以使用检测关节百分比(PDJ),对象关键点相似度(OKS)和平均平均精度(mAP)评估指标进行比较。研究了最先进的身体关节检测架构,如DeepPose、Higher Resolution Network和OpenPose架构,并对它们进行了比较。使用OKS和mAP评估指标在17个关键身体关节的COCO数据集上对这些架构进行了评估。对每个结构的所有机体关节的评价结果进行了比较。这些架构是使用PyTorch和TensorFlow库的开源实现实现的。HRNet体系结构是所有体系结构中最快和最准确的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Keypoint Detection for Identifying Body Joints using TensorFlow
Keypoint Detection for the Body Joints is a process of finding and detecting all the important body joints of a human being. It takes an RGB image as input gives a list of keypoints as output. It can be applied for single-person body joints detection or multi-person body joints detection. The various architectures for detecting the human body joints can be compared using the Percentage of Detected Joints (PDJ), Object Keypoint Similarity (OKS) and mean Average Precision(mAP) evaluation metrics. The state-of-the-art body joint detection architectures like DeepPose, Higher Resolution Network and OpenPose architectures were studied and compared against each other. These architectures were evaluated on the COCO dataset for the 17 key body joints using the OKS and mAP evaluation metrics. The evaluation results on all the body joints were compared to each other for each architecture. The architectures were implemented using opensource implementations of the PyTorch and TensorFlow libraries. The HRNet architecture was the fastest and most accurate of all the architectures.
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