FARE: A Deep Learning-Based Framework for Radar-based Face Recognition and Out-of-distribution Detection
- URL: http://arxiv.org/abs/2501.08440v1
- Date: Tue, 14 Jan 2025 21:08:08 GMT
- Title: FARE: A Deep Learning-Based Framework for Radar-based Face Recognition and Out-of-distribution Detection
- Authors: Sabri Mustafa Kahya, Boran Hamdi Sivrikaya, Muhammet Sami Yavuz, Eckehard Steinbach,
- Abstract summary: We propose a novel pipeline for face recognition and out-of-distribution detection using short-range FMCW radar.
The proposed system utilizes Range-Doppler and micro Range-Doppler Images.
Our method achieves an ID classification accuracy of 99.30% and an OOD detection AUROC of 96.91%.
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- Abstract: In this work, we propose a novel pipeline for face recognition and out-of-distribution (OOD) detection using short-range FMCW radar. The proposed system utilizes Range-Doppler and micro Range-Doppler Images. The architecture features a primary path (PP) responsible for the classification of in-distribution (ID) faces, complemented by intermediate paths (IPs) dedicated to OOD detection. The network is trained in two stages: first, the PP is trained using triplet loss to optimize ID face classification. In the second stage, the PP is frozen, and the IPs-comprising simple linear autoencoder networks-are trained specifically for OOD detection. Using our dataset generated with a 60 GHz FMCW radar, our method achieves an ID classification accuracy of 99.30% and an OOD detection AUROC of 96.91%.
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