CVDec 7, 2024

Impact of Sunglasses on One-to-Many Facial Identification Accuracy

arXiv:2412.05721v24 citationsh-index: 8
Originality Incremental advance
AI Analysis

This work addresses the problem of reduced facial identification accuracy due to sunglasses, which is critical for forensic and surveillance applications, but it is incremental as it builds on existing research about image quality factors.

This paper investigates how wearing dark sunglasses degrades the accuracy of one-to-many facial identification, showing that sunglasses cause a similar accuracy drop as strong blur or lower resolution, and that combining these factors worsens the effect. It also demonstrates that adding synthetic sunglasses to gallery images can recover about 38% of the lost accuracy without retraining.

One-to-many facial identification is documented to achieve high accuracy in the case where both the probe and the gallery are "mugshot quality" images. However, an increasing number of documented instances of wrongful arrest following one-to-many facial identification have raised questions about its accuracy. Probe images used in one-to-many facial identification are often cropped from frames of surveillance video and deviate from "mugshot quality" in various ways. This paper systematically explores how the accuracy of one-to-many facial identification is degraded by the person in the probe image choosing to wear dark sunglasses. We show that sunglasses degrade accuracy for mugshot-quality images by an amount similar to strong blur or noticeably lower resolution. Further, we demonstrate that the combination of sunglasses with blur or lower resolution results in even more pronounced loss in accuracy. These results have important implications for developing objective criteria to qualify a probe image for the level of accuracy to be expected if it used for one-to-many identification. To ameliorate the accuracy degradation caused by dark sunglasses, we show that it is possible to recover about 38% of the lost accuracy by synthetically adding sunglasses to all the gallery images, without model re-training. We also show that the frequency of wearing-sunglasses images is very low in existing training sets, and that increasing the representation of wearing-sunglasses images can greatly reduce the error rate. The image set assembled for this research is available at https://cvrl.nd.edu/projects/data/ to support replication and further research.

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