Magnify-Net for Multi-Person 2D Pose Estimation

Haoqian Wang, Wangpeng An, Xingzheng Wang, Lu Fang, Jiahui Yuan
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引用次数: 11

Abstract

We propose a novel method for multi-person 2D pose estimation. Our model zooms in the image gradually, which we refer to as the Magnify-Net, to solve the bottleneck problem of mean average precision (mAP) versus pixel error. Moreover, we squeeze the network efficiently by an inspired design that increases the mAP while saving the processing time. It is a simple, yet robust, bottom-up approach consisting of one stage. The architecture is designed to detect the part position and their association jointly via two branches of the same sequential prediction process, resulting in a remarkable performance and efficiency rise. Our method outcompetes the previous state-of-the-art results on the challenging COCO key-points task and MPII Multi-Person Dataset.
用于多人2D姿态估计的放大网
提出了一种新的多人二维姿态估计方法。我们的模型将图像逐渐放大,我们称之为“放大网”,以解决平均平均精度(mAP)与像素误差的瓶颈问题。此外,我们通过一种新颖的设计有效地压缩网络,在节省处理时间的同时增加mAP。它是一种简单但健壮的自底向上方法,由一个阶段组成。该体系结构通过同一序列预测过程的两个分支来共同检测零件位置及其关联,从而显著提高了性能和效率。我们的方法在具有挑战性的COCO关键点任务和MPII多人数据集上优于先前最先进的结果。
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