基于重新排序和近似最近邻的改进resnet人脸识别特征提取器

Sheng-Hsing Hsiao, J. Jang
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引用次数: 0

摘要

本文提出了一种基于ResNet特征提取器的人脸识别框架,并提出了人脸检测、人脸对齐、人脸验证/识别以及通过近似最近邻搜索(ANNS)重新排序等性能改进步骤。首先,我们在三个常见的人脸检测基准上评估了两种人脸检测算法,MTCNN和FaceBoxes,然后总结了每种方法的最佳使用场景。其次,经过一定的预处理和后处理,我们的系统选择了基于resnet的特征提取器,在LFW基准上达到了99.33%的验证准确率。第三,利用惩罚曲线确定最佳配置,得到改进的人脸验证结果。基于所提出的预处理和后处理,我们的方法不仅将大型类间差异数据集(CASIA - WebFace)的准确率从84.3%提高到86.5%,而且将大型类内差异数据集(sg - net)的rank - 1准确率从86.6%提高到87.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving ResNet-based Feature Extractor for Face Recognition via Re-ranking and Approximate Nearest Neighbor
This paper proposes a framework for face recognition based on feature extractor from ResNet, together with other steps for performance improvement, including face detection, face alignment, face verification/identification, and re-ranking via Approximate Nearest Neighbor Search (ANNS). First, we evaluate two face detection algorithms, MTCNN, and FaceBoxes on three common face detection benchmarks, and then summarize the best usage scenario for each approach. Second, with certain preprocessing and postprocessing, our system selects the ResNet-based feature extractor, which achieves 99.33% verification accuracy on the LFW benchmark. Third, we use the penalty curve to determine the best configuration and obtain improved results of face verification. Based on the proposed preprocessing and post-processing, our method not only boosts accuracy from 84.3% to 86.5% in large inter-class variation datasets (CASIA - WebFace) but improves Rank-l accuracy from 86.6% to 87.7% in large intra-class variation datasets (FG-NET).
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