Algorithmic Analysis on Deer Hunting-based Grey Wolf for Dynamic Time Wrapping-based Hand Gesture Recognition

Manisha Kowdiki, A. Khaparde
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引用次数: 1

Abstract

Nowadays, dynamic hand gesture recognition has become a complicated work in the recognition of pattern and the communities with consideration of computer vision. This paper tempts to frame an algorithmic analysis on proposed “static and dynamic-oriented hand gesture recognition”. Moreover, the recognition of static and dynamic models is improved by Dynamic Time Warping (DTW) model. In the phase called pre-processing, “grey scale conversion and histogram equalization” is used, whereas, in segmentation, “Active Contour model, and canny edge detection” is employed. Moreover, the significant features are extracted depending on the “Histogram of Oriented Gradients (HOG), and Edge Oriented Histogram (EOH)”, and the feature dimension is reduced by Principle Component Analysis (PCA). The optimal feature selection technique is adopted by the novel “Deer Hunting-based Grey Wolf Optimization (DH-GWO)”. Moreover, the “significant frames in the video” are eliminated by the DTW pattern. Finally, the characters and words are exactly recognized by Neural Network (NN), using the DH-GWO training. Here, the analysis is carried out by varying the random number $e$ from 0.5 to 3.0 of the proposed DH-GWO.
基于猎鹿的灰狼动态时间包裹手势识别算法分析
目前,动态手势识别已经成为一项复杂的工作,在模式识别和考虑计算机视觉的社区。本文试图对所提出的“面向静态和面向动态的手势识别”进行算法分析。此外,采用动态时间翘曲(DTW)模型改进了静态和动态模型的识别。在预处理阶段,使用“灰度转换和直方图均衡化”,而在分割阶段,使用“主动轮廓模型和精细边缘检测”。利用“梯度方向直方图(HOG)和边缘方向直方图(EOH)”提取显著特征,利用主成分分析(PCA)对特征维数进行降维。“基于猎鹿的灰狼优化(DH-GWO)”采用了最优特征选择技术。此外,DTW模式还消除了“视频中的重要帧”。最后,通过DH-GWO训练,实现了神经网络对汉字和单词的准确识别。在这里,通过改变所提出的DH-GWO的随机数$e$从0.5到3.0来进行分析。
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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