EXTRA: An Extended Radial Mean Response Pattern for Hand Gesture Recognition

Gopa Bhaumik, Monu Verma, M. C. Govil, S. Vipparthi
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引用次数: 5

Abstract

Hand gesture recognition (HGR) has gained significant attention in recent year due to its varied applicability and ability to interact with machines efficiently. Hand gestures provide a way of communication for hearing-impaired persons. The HGR is a quite challenging task as its performance is influenced by various aspects such as illumination variations, cluttered backgrounds, spontaneous capture, multi-view etc. Thus, to resolve these issues in this paper, we propose an extended radial mean response (EXTRA) pattern for hand gesture recognition. The EXTRA pattern encodes the intensity variations by establishing a reconciled relationship between local neighboring pixels located at two radials r1 and r2. The gradient information between radials preserves the transitional texture that enhances the robustness to deal with illuminations changes. Moreover, the EXTRA pattern holds extensive radial information, thus it can conserve both high level and micro level edge variations that filter hand posture texture from the cluttered background. Furthermore, the mean responsive relationship between adjacency radial pixels improves robustness to noise conditions. The proposed technique is evaluated on three standard datasets viz NUS hand posture dataset-I, MUGD and Finger Spelling dataset. The experimental results and visual representations show that the proposed technique performs better than the existing algorithms for the purpose intended.
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一种扩展的径向平均响应模式用于手势识别
手势识别(HGR)由于其广泛的适用性和与机器有效交互的能力,近年来受到了广泛的关注。手势为听障人士提供了一种交流方式。HGR是一项非常具有挑战性的任务,因为它的性能受到各种方面的影响,如光照变化、杂乱背景、自发捕获、多视角等。因此,为了解决这些问题,本文提出了一种扩展的径向平均响应(EXTRA)模式用于手势识别。EXTRA模式通过在位于两个径向r1和r2的局部相邻像素之间建立协调关系来编码强度变化。径向之间的梯度信息保留了过渡纹理,增强了对光照变化的鲁棒性。此外,EXTRA模式具有广泛的径向信息,因此可以保留高水平和微观水平的边缘变化,从而从杂乱的背景中过滤手部姿态纹理。此外,相邻径向像素之间的平均响应关系提高了对噪声条件的鲁棒性。该技术在三个标准数据集上进行了评估,即NUS手部姿势数据集i, MUGD和手指拼写数据集。实验结果和可视化表示表明,所提出的技术比现有的算法性能更好。
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