Impacts of Image Obfuscation on Fine-grained Activity Recognition in Egocentric Video.

Soroush Shahi, Rawan Alharbi, Yang Gao, Sougata Sen, Aggelos K Katsaggelos, Josiah Hester, Nabil Alshurafa
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引用次数: 2

Abstract

Automated detection and validation of fine-grained human activities from egocentric vision has gained increased attention in recent years due to the rich information afforded by RGB images. However, it is not easy to discern how much rich information is necessary to detect the activity of interest reliably. Localization of hands and objects in the image has proven helpful to distinguishing between hand-related fine-grained activities. This paper describes the design of a hand-object-based mask obfuscation method (HOBM) and assesses its effect on automated recognition of fine-grained human activities. HOBM masks all pixels other than the hand and object in-hand, improving the protection of personal user information (PUI). We test a deep learning model trained with and without obfuscation using a public egocentric activity dataset with 86 class labels and achieve almost similar classification accuracies (2% decrease with obfuscation). Our findings show that it is possible to protect PUI at smaller image utility costs (loss of accuracy).

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图像混淆对自我中心视频细粒度活动识别的影响。
近年来,由于RGB图像提供了丰富的信息,基于自我中心视觉的细粒度人类活动的自动检测和验证得到了越来越多的关注。然而,要确定需要多少丰富的信息才能可靠地检测感兴趣的活动并不容易。图像中手和物体的定位已被证明有助于区分与手相关的细粒度活动。本文设计了一种基于手部物体的掩模混淆方法(HOBM),并对其在细粒度人类活动自动识别中的效果进行了评估。HOBM遮挡除手和手中物体以外的所有像素,提高了个人用户信息(PUI)的保护。我们使用一个包含86个类标签的公共自我中心活动数据集测试了一个有和没有混淆训练的深度学习模型,并实现了几乎相似的分类精度(混淆降低了2%)。我们的研究结果表明,以较小的图像效用成本(准确性损失)保护PUI是可能的。
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