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Papers/Object-Centric Multi-Task Learning for Human Instances

Object-Centric Multi-Task Learning for Human Instances

Hyeongseok Son, Sangil Jung, Solae Lee, Seongeun Kim, Seung-In Park, ByungIn Yoo

2023-03-13Human Instance SegmentationHuman DetectionSegmentationPose EstimationMulti-Task Learning
PaperPDF

Abstract

Human is one of the most essential classes in visual recognition tasks such as detection, segmentation, and pose estimation. Although much effort has been put into individual tasks, multi-task learning for these three tasks has been rarely studied. In this paper, we explore a compact multi-task network architecture that maximally shares the parameters of the multiple tasks via object-centric learning. To this end, we propose a novel query design to encode the human instance information effectively, called human-centric query (HCQ). HCQ enables for the query to learn explicit and structural information of human as well such as keypoints. Besides, we utilize HCQ in prediction heads of the target tasks directly and also interweave HCQ with the deformable attention in Transformer decoders to exploit a well-learned object-centric representation. Experimental results show that the proposed multi-task network achieves comparable accuracy to state-of-the-art task-specific models in human detection, segmentation, and pose estimation task, while it consumes less computational costs.

Results

TaskDatasetMetricValueModel
Instance SegmentationOCHumanAP27.8Mask2Former
Instance SegmentationOCHumanAP27.3HCQNet
Instance SegmentationOCHumanAP25.5BaseNet-DPS
Human Instance SegmentationOCHumanAP27.8Mask2Former
Human Instance SegmentationOCHumanAP27.3HCQNet
Human Instance SegmentationOCHumanAP25.5BaseNet-DPS

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