使用深度学习算法保护隐私的人类活动识别

K. Kumar, J. Harikiran, B. S. Chandana
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引用次数: 1

摘要

人体活动识别是计算机视觉领域中一个被广泛研究的课题。在不暴露个人身份的情况下识别人类活动就是这样一个用例。为了解决这个问题,我们提出了一种实用的人类活动识别(HAR)方法,同时保持匿名性。它从各种来源获取和分发数据,同时尊重有关个人的隐私。我们方法的核心是基于深度神经网络的(DBN-RGMAA),它不仅更准确,而且还可以部署在实时视频监控系统中。因此,这项工作提出了一种基于深度学习的保护隐私的人类活动方案。首先,采用深度信念网络(Deep Belief Network, DBN)从原始视频数据中提取特征。为了提高HAR识别率,采用混合深度模糊哈希算法(HDFHA)捕获两个动作之间的依赖关系。最后,隐私模型增强了人类的隐私,同时允许通过递归遗传微聚集方法(RGMAA)高度准确地进行动作识别。执行该实现,并通过Accuracy、Precision、Recall和F1 Score对性能进行评估。使用HMDB51数据集进行实证研究。我们使用Python数据科学平台进行的实验表明,OPA-PPAR优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Activity Recognition with Privacy Preserving using Deep Learning Algorithms
Human activity recognition is an extensively researched topic in the field of computer vision. Recognizing human activities without revealing a person’s identity is one such use case. To solve this, we propose a practical method for human activity recognition (HAR) while maintaining anonymity. It captures and distributes data from a variety of sources while respecting the privacy of the individuals concerned. At the core of our approach is (DBN-RGMAA) based on deep neural networks, which are not only more accurate but can also be deployed in real-time video surveillance systems. Hence, this work presents a deep learning-based scheme for privacy-preserving human activities. Initially, for extracting the features from raw video data, a Deep Belief Network (DBN) is used. To increase the HAR identification rate, Hybrid Deep Fuzzy Hashing Algorithm (HDFHA) is employed to capture dependencies between two actions. Finally, the privacy model enhances the privacy of humans while permitting a highly accurate approach towards action recognition by the Recursive Genetic Micro-Aggregation Approach (RGMAA). The implementation is executed and the performances are evaluated by Accuracy, Precision, Recall, and F1 Score. A dataset named HMDB51 is used for empirical study. Our experiments using the Python data science platform reveal that the OPA-PPAR outperforms existing methods.
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