Discriminative Sampling of Proposals in Self-Supervised Transformers for Weakly Supervised Object Localization

Shakeeb Murtaza, Soufiane Belharbi, M. Pedersoli, Aydin Sarraf, Eric Granger
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引用次数: 6

Abstract

Drones are employed in a growing number of visual recognition applications. A recent development in cell tower inspection is drone-based asset surveillance, where the autonomous flight of a drone is guided by localizing objects of interest in successive aerial images. In this paper, we propose a method to train deep weakly-supervised object localization (WSOL) models based only on image-class labels to locate object with high confidence. To train our localizer, pseudo labels are efficiently harvested from a self-supervised vision transformers (SSTs). However, since SSTs decompose the scene into multiple maps containing various object parts, and do not rely on any explicit super-visory signal, they cannot distinguish between the object of interest and other objects, as required WSOL. To address this issue, we propose leveraging the multiple maps generated by the different transformer heads to acquire pseudo-labels for training a deep WSOL model. In particular, a new Discriminative Proposals Sampling (DiPS) method is introduced that relies on a CNN classifier to identify discriminative regions. Then, foreground and background pixels are sampled from these regions in order to train a WSOL model for generating activation maps that can accurately localize objects belonging to a specific class. Empirical results11Our code is available: https://github.com/shakeebmurtaza/dips on the challenging TelDrone dataset indicate that our proposed approach can outperform state-of-art methods over a wide range of threshold values over produced maps. We also computed results on CUB dataset, showing that our method can be adapted for other tasks.
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自监督变压器弱监督目标定位方案的判别抽样
无人机被用于越来越多的视觉识别应用。蜂窝塔检查的最新发展是基于无人机的资产监视,其中无人机的自主飞行是通过在连续的航空图像中定位感兴趣的物体来引导的。本文提出了一种仅基于图像类标签训练深度弱监督目标定位(WSOL)模型的方法,以实现高置信度的目标定位。为了训练我们的定位器,从自监督视觉变压器(SSTs)中有效地获取伪标签。然而,由于SSTs将场景分解为包含各种对象部分的多个映射,并且不依赖于任何显式的监督信号,因此它们无法像WSOL要求的那样区分感兴趣的对象和其他对象。为了解决这个问题,我们建议利用不同转换头生成的多个映射来获取伪标签,以训练深度WSOL模型。特别地,引入了一种新的判别建议采样(DiPS)方法,该方法依赖于CNN分类器来识别判别区域。然后,从这些区域中采样前景和背景像素,以训练WSOL模型,生成能够准确定位属于特定类的对象的激活图。经验结果11我们的代码是可用的:https://github.com/shakeebmurtaza/dips在具有挑战性的TelDrone数据集上表明,我们提出的方法可以在生成的地图的大范围阈值上优于最先进的方法。我们还对CUB数据集进行了计算,结果表明我们的方法可以适用于其他任务。
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