论文笔记之:Pedestrian Detection aided by Deep Learning Semantic Tasks

Pedestrian Detection aided by Deep Learning Semantic Tasks

CVPR 2015

本文考虑将语义任务(即:行人属性场景属性)和行人检测相结合,以语义信息协助进行行人检测。先来看一下大致的检测结果(TA-CNN为本文检测结果):

可以看出,由于有了属性信息的协助,其行人检测的精确度有了较大的提升。具体网络架构如下图所示:

时间: 2024-10-11 17:40:37

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