快速静止到视频人脸识别中深度嵌入的颗粒计算和序列分析

A. Savchenko
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引用次数: 3

摘要

本文主要研究基于深度卷积神经网络提取的高维嵌入之间的距离计算的大量受试者的静态到视频的人脸识别。我们建议利用颗粒结构和顺序处理输入视频的所有帧的颗粒表示。粗粒颗粒只包含少量的深嵌套第一主成分。每一帧在更细粒度级别的表示与那些在前一级别的决策是可靠的个体的照片表示相匹配。通过设定参考实例与输入帧之间的距离与最小距离之比的阈值来检验系统的可靠性。因此,所有不可靠的个人的照片不再被检查为一个特定的框架,在更细的粒度下一个级别。将所有帧的决策统一为候选身份集,并选择最大的a后验最终决策。使用LFW、YTF和IJB-A数据集和最先进的深度嵌入进行的实验研究表明,该方法比传统方法快2-10倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Granular Computing and Sequential Analysis of Deep Embeddings in Fast Still-to-Video Face Recognition
This paper is focused on still-to-video face recognition with large number of subjects based on computation of distances between high-dimensional embeddings extracted using deep convolution neural networks. We propose to utilize granular structures and sequentially process granular representations of all frames of the input video. The coarse-grained granules include only low number of the first principal components of deep embeddings. The representation of each frame at finer granularity levels is matched with the representations of photos of only those individuals, for whom the decision at previous levels was reliable. The reliability is checked by thresholding the ratio of distance between reference instance and input frame to the minimal distance. As a result, the photos of all unreliable individuals are not examined anymore for a particular frame at the next levels with finer granularity. Decisions for all frames are united into a candidate set of identities, and the maximal a-posterior final decision is chosen. The experimental study with the LFW, YTF and IJB-A datasets and the state-of-the-art deep embeddings demonstrated that the proposed approach is 2–10 times faster than conventional methods.
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