FANVID: A Benchmark for Face and License Plate Recognition in Low-Resolution Videos
Kavitha Viswanathan, Vrinda Goel, Shlesh Gholap, Devayan Ghosh, Madhav Gupta, Dhruvi Ganatra, Sanket Potdar, Amit Sethi

TL;DR
FANVID introduces a challenging low-resolution video benchmark for face and license plate recognition, promoting development of temporal models to improve identification accuracy in surveillance scenarios.
Contribution
The paper presents FANVID, a new dataset and benchmark for low-resolution video face and license plate recognition, with novel tasks and evaluation metrics to advance temporal recognition models.
Findings
Baseline method achieves 0.58 face matching accuracy
Baseline method achieves 0.42 license plate recognition accuracy
Dataset includes diverse identities and challenging conditions
Abstract
Real-world surveillance often renders faces and license plates unrecognizable in individual low-resolution (LR) frames, hindering reliable identification. To advance temporal recognition models, we present FANVID, a novel video-based benchmark comprising nearly 1,463 LR clips (180 x 320, 20--60 FPS) featuring 63 identities and 49 license plates from three English-speaking countries. Each video includes distractor faces and plates, increasing task difficulty and realism. The dataset contains 31,096 manually verified bounding boxes and labels. FANVID defines two tasks: (1) face matching -- detecting LR faces and matching them to high-resolution mugshots, and (2) license plate recognition -- extracting text from LR plates without a predefined database. Videos are downsampled from high-resolution sources to ensure that faces and text are indecipherable in single frames, requiring models…
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Taxonomy
TopicsVehicle License Plate Recognition · Face recognition and analysis · Biometric Identification and Security
