基于优化的人脸图像质量评估技术改进

Ziga Babnik, N. Damer, V. Štruc
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引用次数: 2

摘要

当代人脸识别(FR)模型在受限环境中实现了近乎理想的识别性能,但不能完全将性能转化为无约束(现实世界)场景。为了帮助提高人脸识别系统在这种无约束环境下的性能和稳定性,人脸图像质量评估(FIQA)技术试图从输入的人脸图像中推断出有助于识别过程的样本质量信息。虽然现有的FIQA技术能够有效地捕获高质量和低质量图像之间的差异,但它们通常不能完全区分相似质量的图像,导致在许多情况下性能较低。为了解决这个问题,我们提出了一种监督质量标签优化方法,旨在提高现有FIQA技术的性能。开发的优化程序将附加信息(用选定的FR模型计算)注入到使用给定FIQA技术生成的初始质量分数中,以产生对“实际”图像质量的更好估计。我们使用六种最先进的FIQA方法(CR-FIQA, FaceQAN, SER-FIQ, PCNet, MagFace, SER-FIQ)在五个常用基准(LFW, CFP-FP, CPLFW, CALFW, XQLFW)上使用三种目标FR模型(ArcFace, ElasticFace, CurricularFace)在综合实验中评估了所提出的方法,并获得了非常令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization-Based Improvement of Face Image Quality Assessment Techniques
Contemporary face recognition (FR) models achieve near-ideal recognition performance in constrained settings, yet do not fully translate the performance to unconstrained (real-world) scenarios. To help improve the performance and stability of FR systems in such unconstrained settings, face image quality assessment (FIQA) techniques try to infer sample-quality information from the input face images that can aid with the recognition process. While existing FIQA techniques are able to efficiently capture the differences between high and low quality images, they typically cannot fully distinguish between images of similar quality, leading to lower performance in many scenarios. To address this issue, we present in this paper a supervised quality-label optimization approach, aimed at improving the performance of existing FIQA techniques. The developed optimization procedure infuses additional information (computed with a selected FR model) into the initial quality scores generated with a given FIQA technique to produce better estimates of the “actual” image quality. We evaluate the proposed approach in comprehensive experiments with six state-of-the-art FIQA approaches (CR-FIQA, FaceQAN, SER-FIQ, PCNet, MagFace, SER-FIQ) on five commonly used benchmarks (LFW, CFP-FP, CPLFW, CALFW, XQLFW) using three targeted FR models (ArcFace, ElasticFace, CurricularFace) with highly encouraging results.
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