Efficient Deep Learning for Biometrics: Overview, Challenges and Trends in Ear of Frugal AI
AI 摘要
综述了生物识别中高效深度学习方法,讨论了训练和部署挑战,提出了评估指标和未来研究方向。
主要贡献
- 综述了生物识别领域的高效深度学习方法
- 提出了训练和部署深度学习模型的挑战和解决方法
- 讨论了评估模型效率的指标,并提出了未来研究方向
方法论
本文采用文献综述的方法,对生物识别中高效深度学习的现有方法进行了整理和归纳。
原文摘要
Recent advances in deep learning, whether on discriminative or generative tasks have been beneficial for various applications, among which security and defense. However, their increasing computational demands during training and deployment translates directly into high energy consumption. As a consequence, this induces a heavy carbon footprint which hinders their widespread use and scalability, but also a limitation when deployed on resource-constrained edge devices for real-time use. In this paper, we briefly survey efficient deep learning methods for biometric applications. Specifically, we tackle the challenges one might incur when training and deploying deep learning approaches, and provide a taxonomy of the various efficient deep learning families. Additionally, we discuss complementary metrics for evaluating the efficiency of these models such as memory, computation, latency, throughput, and advocate for universal and reproducible metrics for better comparison. Last, we give future research directions to consider.