Finger vein recognition is an emerging biometric recognition technology. Different from the other biometric features on the body surface, the venous vascular tissue of the fingers is buried deep inside the skin. Due to this advantage, finger vein recognition is highly stable and private. They are almost impossible to be stolen and difficult to interfere with by external conditions. Unlike the finger vein recognition methods based on traditional machine learning, the artificial neural network technique, especially deep learning, it without relying on feature engineering and have superior performance. To summarize the development of finger vein recognition based on artificial neural networks, this paper collects 149 related papers. First, we introduce the background of finger vein recognition and the motivation of this survey. Then, the development history of artificial neural networks and the representative networks on finger vein recognition tasks are introduced. The public datasets that are widely used in finger vein recognition are then described. After that, we summarize the related finger vein recognition tasks based on classical neural networks and deep neural networks, respectively. Finally, the challenges and potential development directions in finger vein recognition are discussed. To our best knowledge, this paper is the first comprehensive survey focusing on finger vein recognition based on artificial neural networks.
翻译:切脉识别是一种新兴的生物鉴别技术。 与身体表面的其他生物鉴别特征不同, 手指的静脉组织被埋在皮肤深处。 由于这一优势, 手指血管识别是高度稳定和私密的。 它们几乎不可能被盗, 也很难受到外部条件的干扰。 与基于传统机器学习的手指血管识别方法不同, 人工神经网络技术, 特别是深层学习, 而不依赖特征工程和优异性能。 本文收集了149份相关文件。 首先, 我们介绍了手指血管识别的背景和这次调查的动机。 然后, 引入了人工神经网络的发展史和关于切脉识别任务的代表性网络。 用于切脉识别的公众数据集随后被描述。 之后, 我们分别总结了基于古典神经网络和深层神经网络的相关手指血管识别任务。 最后, 讨论了手指血管识别的挑战和潜在发展方向。 对于我们的最佳了解, 本文是第一次侧重于基于人工神经网络的手指血管识别的全面调查。