基于骨骼异常感知学习的跨域动物姿态估计

IF 11.1 1区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Le Han;Kaixuan Chen;Lei Zhao;Yangbo Jiang;Pengfei Wang;Nenggan Zheng
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引用次数: 0

摘要

动物姿态估计经常受到注释的稀缺性和场景和物种的多样性的限制。基于伪标签生成的无监督领域自适应范式基于骨架位置一致性对未标记数据的预测关键点进行判别,已被证明对此类问题是有效的。然而,现有的方法由于不能有效区分误差相同的样本对,产生了大量假阳性的伪标签。在本研究中,我们从骨骼异常学习的新角度提出了一种跨域动物姿态估计模型。我们构建了一种图对比学习机制来获取骨架异常感知知识,该机制能够为目标域生成准确的伪标签,并对未标记的数据施加图约束。设计了基于骨架异常反馈的领域自适应框架,实现了目标特征的隐式对齐和跨领域的联合训练。此外,我们提出了一种新的大鼠姿态数据集UDARP-9.4K,以解决包含多种实验场景的小型动物姿态数据集的不足。对相关数据集进行了详细的审查和评估。在UDARP-9.4K和两个公共数据集上进行了大量实验,以证明该模型在跨场景和跨物种动物姿态估计任务中的优越性。进一步的分析表明了该模型对骨架结构特征学习的有效性。UDARP-9.4K数据集可在这里获得https://github.com/CSDLLab/UDARP-9.4K-Dataset。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-Domain Animal Pose Estimation With Skeleton Anomaly-Aware Learning
Animal pose estimation is often constrained by the scarcity of annotations and the diversity of scenarios and species. The pseudo-label generation based unsupervised domain adaptation paradigm, which discriminates the predicted keypoints of unlabeled data based on the skeleton position consistency, has demonstrated effectiveness for such problems. However, existing methods generate pseudo-labels with massive false positives, because they cannot effectively distinguish sample pairs with the same errors. In this study, we propose a cross-domain animal pose estimation model from a novel perspective of skeleton anomaly learning. We construct a graph contrastive learning mechanism to acquire the skeleton anomaly-aware knowledge, which enables the generation of accurate pseudo-labels for target domain and imposes graph constraint on unlabeled data. And a skeleton anomaly-feedback based domain adaptation framework is designed to facilitate implicit alignment of object-specific features and joint training of cross-domain. Besides, we propose a novel rat pose dataset named UDARP-9.4K to address the gap of small-sized animal pose datasets encompassing diverse experimental scenarios. The related datasets are reviewed and evaluated in detail. Extensive experiments are conducted on UDARP-9.4K and two public datasets to demonstrate the superiority of the proposed model in cross-scenarios and cross-species animal pose estimation tasks. Further analysis reveals the effectiveness of the proposed model for skeleton structure feature learning. The UDARP-9.4K dataset is available here https://github.com/CSDLLab/UDARP-9.4K-Dataset.
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来源期刊
CiteScore
13.80
自引率
27.40%
发文量
660
审稿时长
5 months
期刊介绍: The IEEE Transactions on Circuits and Systems for Video Technology (TCSVT) is dedicated to covering all aspects of video technologies from a circuits and systems perspective. We encourage submissions of general, theoretical, and application-oriented papers related to image and video acquisition, representation, presentation, and display. Additionally, we welcome contributions in areas such as processing, filtering, and transforms; analysis and synthesis; learning and understanding; compression, transmission, communication, and networking; as well as storage, retrieval, indexing, and search. Furthermore, papers focusing on hardware and software design and implementation are highly valued. Join us in advancing the field of video technology through innovative research and insights.
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