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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >PCLoss: Fashion Landmark Estimation with Position Constraint Loss
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PCLoss: Fashion Landmark Estimation with Position Constraint Loss

机译:PCLOS:时尚地标估计与位置约束损失

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摘要

Fashion landmark estimation aims at locating functional key points of clothes, which has wide potential applications in electronic commerce. However, due to the occlusion and weak outline information, landmark estimation occurs outliers and duplicate detection problems. To alleviate these issues, we propose Position Constraint Loss (PCLoss) to constrain error landmark locations by utilizing the position relationship of landmarks. Specifically, PCLoss adds a regularization term for each landmark to regularize their relative positions, and it can be easily applied to both regression and heatmap based methods without extra computation during inference. Unlike existing approaches that propagate landmark information between feature layers by specific network structures, PCLoss introduces position relations of landmarks in the label space without modifying the network structure. In addition, we leverage the skeleton-like relation of clothing to further strengthen position constraints between landmarks. Extensive experimental results on DeepFashion, FLD and FashionAI demonstrate that our methods can effectively increase the performance of mainstream frameworks by a large margin. We also explore the effectiveness of PCLoss on human pose estimation task, and the experimental results on COCO 2017 prove the generality of our methods on other key point estimation tasks.
机译:时尚地标估计的目标是定位服装的功能关键点,在电子商务中有着广泛的潜在应用。然而,由于遮挡和微弱的轮廓信息,地标估计会出现异常值和重复检测问题。为了缓解这些问题,我们提出了位置约束损失(Position Constraint Loss,PCLoss)方法,利用地标的位置关系来约束错误地标的位置。具体来说,PCLoss为每个地标添加了一个正则化项,以正则化它们的相对位置,并且它可以很容易地应用于基于回归和热图的方法,而无需在推理过程中进行额外计算。与通过特定网络结构在要素层之间传播地标信息的现有方法不同,PCLoss在标签空间中引入地标的位置关系,而无需修改网络结构。此外,我们利用衣服的骨架关系来进一步加强地标之间的位置约束。在DeepFashion、FLD和FashionAI上的大量实验结果表明,我们的方法可以有效地大幅度提高主流框架的性能。我们还探讨了PCLoss在人体姿势估计任务中的有效性,在COCO 2017上的实验结果证明了我们的方法在其他关键点估计任务中的通用性。

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