Single-Stage Multi-human Parsing via Point Sets and Center-based Offsets

J Chu, L Jin, X Fan, Y Teng, Y Wei, Y Fang… - Proceedings of the 31st …, 2023 - dl.acm.org
J Chu, L Jin, X Fan, Y Teng, Y Wei, Y Fang, J Xing, J Zhao
Proceedings of the 31st ACM International Conference on Multimedia, 2023dl.acm.org
This work studies the multi-human parsing problem. Existing methods, either following top-
down or bottom-up two-stage paradigms, usually involve expensive computational costs. We
instead present a high-performance Single-stage Multi-human Parsing (SMP) deep
architecture that decouples the multi-human parsing problem into two fine-grained sub-
problems, ie, locating the human body and parts. SMP leverages the point features in the
barycenter positions to obtain their segmentation and then generates a series of offsets from …
This work studies the multi-human parsing problem. Existing methods, either following top-down or bottom-up two-stage paradigms, usually involve expensive computational costs. We instead present a high-performance Single-stage Multi-human Parsing (SMP) deep architecture that decouples the multi-human parsing problem into two fine-grained sub-problems,i.e., locating the human body and parts. SMP leverages the point features in the barycenter positions to obtain their segmentation and then generates a series of offsets from the barycenter of the human body to the barycenters of parts, thus performing human body and parts matching without the grouping process. Within the SMP architecture, we propose a Refined Feature Retain module to extract the global feature of instances through generated mask attention and a Mask of Interest Reclassify module as a trainable plug-in module to refine the classification results with the predicted segmentation. Extensive experiments on the MHPv2.0 dataset demonstrate the best effectiveness and efficiency of the proposed method, surpassing the state-of-the-art method by 2.1% in AP50p, 1.0% in APvolpsup>, and 1.2% in PCP50. Moreover, SMP also achieves superior performance in DensePose-COCO, verifying generalization of the model. In particular, the proposed method requires fewer training epochs and a less complex model architecture. Our codes are released in https://github.com/cjm-sfw/SMP.
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