Develop a Lightweight Convolutional Neural Network to Recognize Palms Using 3D Point Clouds

Inf. Comput. Pub Date : 2023-07-03 DOI:10.3390/info14070381
Yumeng Zhang, Chia-Yuan Cheng, Chih-Lung Lin, Chun-Chieh Lee, Kuo-Chin Fan
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Abstract

Biometrics has become an important research issue in recent years, and the use of deep learning neural networks has made it possible to develop more reliable and efficient recognition systems. Palms have been identified as one of the most promising candidates among various biometrics due to their unique features and easy accessibility. However, traditional palm recognition methods involve 3D point clouds, which can be complex and difficult to work with. To mitigate this challenge, this paper proposes two methods which are Multi-View Projection (MVP) and Light Inverted Residual Block (LIRB).The MVP simulates different angles that observers use to observe palms in reality. It transforms 3D point clouds into multiple 2D images and effectively reduces the loss of mapping 3D data to 2D data. Therefore, the MVP can greatly reduce the complexity of the system. In experiments, MVP demonstrated remarkable performance on various famous models, such as VGG or MobileNetv2, with a particular improvement in the performance of smaller models. To further improve the performance of small models, this paper applies LIRB to build a lightweight 2D CNN called Tiny-MobileNet (TMBNet).The TMBNet has only a few convolutional layers but outperforms the 3D baselines PointNet and PointNet++ in FLOPs and accuracy. The experimental results show that the proposed method can effectively mitigate the challenges of recognizing palms through 3D point clouds of palms. The proposed method not only reduces the complexity of the system but also extends the use of lightweight CNN. These findings have significant implications for developing biometrics and could lead to improvements in various fields, such as access control and security control.
开发一个轻量级的卷积神经网络来识别手掌使用3D点云
近年来,生物识别技术已成为一个重要的研究课题,而深度学习神经网络的应用使得开发更可靠、更高效的识别系统成为可能。手掌由于其独特的特征和易于获取的特点,已被确定为各种生物特征中最有前途的候选者之一。然而,传统的手掌识别方法涉及三维点云,这可能是复杂和难以处理的。为了解决这一问题,本文提出了多视图投影(MVP)和光倒转残差块(LIRB)两种方法。MVP模拟了观察者在现实中用来观察手掌的不同角度。它将三维点云转换成多幅二维图像,有效减少了三维数据映射到二维数据的损失。因此,MVP可以大大降低系统的复杂性。在实验中,MVP在VGG或MobileNetv2等各种著名模型上表现出了显著的性能,在较小的模型上表现出了特别的提高。为了进一步提高小型模型的性能,本文应用LIRB构建了一个轻量级2D CNN,称为Tiny-MobileNet (TMBNet)。TMBNet只有几个卷积层,但在FLOPs和精度方面优于3D基线PointNet和PointNet++。实验结果表明,该方法可以有效地缓解手掌三维点云识别的挑战。该方法不仅降低了系统的复杂度,而且扩展了轻量级CNN的使用范围。这些发现对生物识别技术的发展具有重要意义,并可能导致访问控制和安全控制等各个领域的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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