论文标题

第一人称办公视频的隐私感知活动分类

Privacy-Aware Activity Classification from First Person Office Videos

论文作者

Ghosh, Partho, Istiak, Md. Abrar, Rashid, Nayeeb, Akash, Ahsan Habib, Abrar, Ridwan, Dastider, Ankan Ghosh, Sushmit, Asif Shahriyar, Hasan, Taufiq

论文摘要

在可穿戴的身体 - 面膜的出现中,第一人称视频(FPV)的人类活动分类已成为对各种应用的重要性越来越重要的话题,包括在生活中,执法,体育,运动,工作场所和医疗保健。 FPV的挑战性方面之一是它暴露于用户视野内的潜在敏感对象。在这项工作中,我们开发了一个关注办公视频的隐私感知活动分类系统。我们利用了带有Inception-Resnet混合动力车的蒙版-RCNN作为用于检测的功能提取器,然后从视频中模糊了敏感对象(例如,数字屏幕,人脸,纸张)。对于活动分类,我们将基于Resnet,Resnext和基于Densenet的特征提取器的复发神经网络(RNN)合并。拟议的系统在FPV Office视频数据集上进行了培训和评估,其中包括通过IEEE视频和图像处理(VIP)杯2019年竞赛提供的18类。在原始未保护的FPV上,提出的活动分类器集合的精度分别为85.078%,精确,召回和F1分别为0.88、0.85和0.86。在受到隐私保护的视频中,表演的精度,精度,召回和F1得分分别为73.68%,0.79、0.75和0.74。提出的系统在2019年IEEE VIP杯比赛中获得了第三奖。

In the advent of wearable body-cameras, human activity classification from First-Person Videos (FPV) has become a topic of increasing importance for various applications, including in life-logging, law-enforcement, sports, workplace, and healthcare. One of the challenging aspects of FPV is its exposure to potentially sensitive objects within the user's field of view. In this work, we developed a privacy-aware activity classification system focusing on office videos. We utilized a Mask-RCNN with an Inception-ResNet hybrid as a feature extractor for detecting, and then blurring out sensitive objects (e.g., digital screens, human face, paper) from the videos. For activity classification, we incorporate an ensemble of Recurrent Neural Networks (RNNs) with ResNet, ResNext, and DenseNet based feature extractors. The proposed system was trained and evaluated on the FPV office video dataset that includes 18-classes made available through the IEEE Video and Image Processing (VIP) Cup 2019 competition. On the original unprotected FPVs, the proposed activity classifier ensemble reached an accuracy of 85.078% with precision, recall, and F1 scores of 0.88, 0.85 & 0.86, respectively. On privacy protected videos, the performances were slightly degraded, with accuracy, precision, recall, and F1 scores at 73.68%, 0.79, 0.75, and 0.74, respectively. The presented system won the 3rd prize in the IEEE VIP Cup 2019 competition.

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