@inproceedings{d52624ecdd6f4d818d5996b08c651711,
title = "ReSPEcT: Privacy respecting thermal based specific person recognition",
abstract = "Video analytic techniques have been used to extract high level information from video streams. The technique leverages advances on machine learning to summarize complex image data into simple alert-signal to attract the attention of human operators. For example, in a station for the underground video analytic can help the operator to focus on an event from a specific camera rather than leaving this only to the human eye. A concern of such techniques is privacy as they expose people identity and enable profiling of personal habits and orientations. This work introduces ReSPEcT (Privacy Respecting theRmal basEd Specific Person rECogniTion), a privacy preserving video analytic system based on thermal video streams. ReSPEcT is able to identify a specific-human in thermal video streams from low-cost, low resolution cameras. The system leverages recent advances in machine learning (CNNs) and a plethora of pre-processing mechanisms, such as image automatic labeling, image segmentation, and image augmentation to reduce the stream background noise, improve resilience, strengthen human-body classification, and finally enable a specific human-target identification. ReSPEcT{\textquoteright}s automatic labeling tool significantly reduces time thus automatically performing labeling using a model that can be retrained by an interactive web application. The experimental evaluation shows that overall ReSPEcT achieve 96.83% accuracy in identifying a specific person. Furthermore, is important to notice that while ReSPEcT can identify a specific human, the tool is not aware of the real-identity as it operates only on thermal images. ReSPEcT paves the way to use video analytic in a variety of privacy-protected scenarios, such as confidential meetings, sensitive spaces, or even public toilets.",
keywords = "Ethical AI, Machine Learning, Privacy Preserving Computing, Thermal Video Analytic",
author = "Chan, {Ngai Seng} and Chan, {Ka Ian} and Rita Tse and Tang, {Su Kit} and Giovanni Pau",
note = "Publisher Copyright: {\textcopyright} 2021 SPIE; 13th International Conference on Digital Image Processing, ICDIP 2021 ; Conference date: 20-05-2021 Through 23-05-2021",
year = "2021",
doi = "10.1117/12.2599271",
language = "English",
series = "Proceedings of SPIE - The International Society for Optical Engineering",
publisher = "SPIE",
editor = "Xudong Jiang and Hiroshi Fujita",
booktitle = "Thirteenth International Conference on Digital Image Processing, ICDIP 2021",
address = "United States",
}