基于迁移学习的机器人伙伴鲁棒人脸识别

Nuo Wi Noel Tay, János Botzheim, C. Loo, N. Kubota
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引用次数: 2

摘要

人脸识别是人机交互的关键。要求机器人伙伴在不受约束的条件下实时工作,但不限制人类居住者的人身自由。另一方面,由于其有限的计算能力,需要在精度和计算负荷之间进行权衡。这种权衡可以通过引入信息结构化空间来缓解。本文采用迁移学习来进行无约束的人脸识别,其中模板是从各种图像捕获设备获取的域中构建的,这些图像捕获设备是来自信息结构化空间的传感器的子集。给定环境条件,使用适当的模板进行识别。目前,使用不同的数据库图像来模拟不同的环境条件。通过重构的联合概率人脸验证方法,可以方便地学习和合并模板,大大降低了处理负荷。在标准数据库上进行的实验研究表明,特定和小的目标域样本可以在不增加计算负担的情况下提高识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust face recognition via transfer learning for robot partner
Face recognition is crucial for human-robot interaction. Robot partners are required to work in real-time under unconstrained condition, yet, do not restrict the personal freedom of human occupants. On the other hand, due to its limited computational capability, a tradeoff between accuracy and computational load needs to be made. This tradeoff can be alleviated via the introduction of informationally structured space. For this paper, transfer learning is employed to perform unconstrained face recognition, where templates are constructed from domains acquired from various image-capturing devices, which is a subset of sensors from the informationally structured space. Given the environmental conditions, appropriate templates are used for recognition. Currently, different database images are used to simulate different environmental conditions. The templates can be easily learned and merged via a reformulated joint probabilistic face verification method, which reduces significantly the processing load. Tested on standard databases, experimental studies show that specific and small target domain samples can boost the recognition performance without imposing strain on computation.
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