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Contrastive and consistent feature learning for weakly supervised object localization and semantic segmentation

机译:对弱监督对象本地化和语义分割的对比和一致的特征学习

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Weakly supervised learning attempts to construct predictive models by learning with weak supervision. In this paper, we concentrate on weakly supervised object localization and semantic segmentation tasks. Existing methods are limited to focusing on narrow discriminative parts or overextending the activations to less discriminative regions even on backgrounds. To mitigate these problems, we regard the background as an important cue that guides the feature activation to cover the entire object to the right extent, and propose two novel objective functions: 1) contrastive attention loss and 2) foreground consistency loss. Contrastive attention loss draws the foreground feature and its dropped version close together and pushes the dropped foreground feature away from the background feature. Foreground consistency loss favors agreement between layers and provides early layers with a sense of objectness. Using both losses leads to balanced improvements over localization and segmentation accuracy by boosting activations on less discriminative regions but restraining the activation in the target object extent. For better optimizing the above losses, we use the non-local attention blocks to replace channel-pooled attention leading to enhanced attention maps considering the spatial similarity. Finally, our method achieves state-of-the-art localization performance on CUB-200-2011, ImageNet, and OpenImages benchmarks regarding top-1 localization accuracy, MaxBoxAccV2, and PxAP. We also demonstrate the effectiveness of our method in improving segmentation performance measured by mIoU on the PASCAL VOC dataset. (C) 2021 Elsevier B.V. All rights reserved.
机译:弱势监督学习试图通过弱监管学习构建预测模型。在本文中,我们专注于弱势监督的对象本地化和语义分割任务。现有方法仅限于关注狭窄的歧视性部位或过度扩张即使在背景上也会对歧视性区域的激活。为了缓解这些问题,我们将背景视为一个重要的提示,指导特征激活,以覆盖整个物体,以达到正确的程度,并提出两种新的客观功能:1)对比的注意力损失和2)前景一致性损失。对比的注意力损失将前景特征绘制,其掉落的版本靠近,然后将掉落的前景功能从后台功能推开。前景一致性损失有利于层之间的协议,并提供具有对象感的早期层。通过促进在较少的歧视区域上的激活,而且限制目标对象范围内的激活,使用两种损失都会导致对本地化和分割准确性的平衡改进。为了更好地优化上述损失,我们使用非本地注意力块来取代渠道池的注意力,导致考虑空间相似性的增强注意图。最后,我们的方法在CUB-200-2011,ImageNet和OpenImages基准上实现了最先进的本地化性能,就前面1本地化精度,MAXBOXACCV2和PXAP。我们还展示了我们在提高Miou在Pascal VOC数据集测量的分割性能方面的有效性。 (c)2021 Elsevier B.v.保留所有权利。

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