基于光流引导轨迹图像的深度网络手势识别

V. Kavyasree, Debajit Sarma, Priyanka Gupta, M. Bhuyan
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引用次数: 6

摘要

在人机交互社区中,身体手势和手势的使用是一种方便而有用的替代工具。典型的手势识别系统包括检测、表示和识别三个阶段。在这个手势识别过程中,由于手的形状和大小的变化,在杂乱的背景下对移动的手进行正确的检测和跟踪是非常重要的。在这项工作中,我们提出了一个识别孤立手势的框架,其中通过光流检测不同形状,大小和颜色的移动手势,并使用VGG16架构识别正确的手势。本文利用光流来跟踪视频中的兴趣点,并将跟踪到的运动存储为图像,我们称之为基于轨迹的图像。然后将这些图像馈送到VGG16网络进行分类。对于特征学习和识别,使用基于深度学习的方法,因为它具有提取用于分类目的的鲁棒有效特征的固有能力。该方法的主要优点是简单易行。该方法在有限数量的连续孤立手势视频数据集上提供了较高的多类分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Network-based Hand Gesture Recognition using Optical Flow guided Trajectory Images
The use of body gestures and specially hand ges-tures can be a convenient and useful alternative tool for many utilizations in the human-computer interaction community. A typical hand gesture recognition system comprises different stages like detection, representation and recognition. In this process of hand gesture recognition, proper detection and tracking of the moving hand in a cluttered background play an important role due to the varied shape and size of the hand. In this work, we propose a framework for the recognition of isolated gestures where the moving hand with different shapes, size and colours is detected through optical flow, and the proper hand gesture is recognized using a VGG16 architecture. This paper utilizes the optical flow to track points of interest in video and store the tracked motion as images that we call trajectory-based images. These images are then fed to a VGG16 network for classification. For feature learning and recognition, a deep learning based method is used due to its inherent ability to extract robust and effective features for classification purposes. The main benefits of the proposed method is its simplicity and ease of implementation. This method has offered higher multi-class classification accuracy with a limited amount of continuous isolated hand gesture video dataset.
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