Comparative Analysis of Histograms of Oriented Gradients and Local Binary Pattern Coefficients for Facial Emotion Recognition

Swapna Subudhiray, H. Palo, N. Das, S. Mohanty
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引用次数: 3

Abstract

This paper examines the human expressive states dependent on facial pictures utilizing a few viable component extraction methods. It reproduces the K-Nearest Neighbor (k-NN) classifier to approve the adequacy of successful capabilities separated from the Local Binary Pattern (LBP) and Histograms of Oriented Gradients (HOG) for the said task. An examination of the strategies has been made dependent on the normal acknowledgment precision of the classifiers utilizing the calculation unpredictability as a compromise. The component extraction methods have been approved for their discriminative force under various preparations for testing information division proportions, Kappa Coefficient, and order time. The LBP has outperformed the HOG include extraction strategy with a normal precision of 79.6% yet remains computationally costly. On the contrary, the HOG method has furnished a lower characterization time with a normal precision of 59.3 % as uncovered from our outcomes.
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面向梯度直方图与局部二值模式系数在面部情绪识别中的比较分析
本文利用几种可行的成分提取方法研究了依赖于人脸图像的人类表达状态。它再现了k-最近邻(k-NN)分类器,以批准从局部二值模式(LBP)和定向梯度直方图(HOG)中分离出来的成功能力的充分性。对策略的检查依赖于分类器的正常确认精度,利用计算不可预测性作为妥协。在测试信息划分比例、Kappa系数和订单时间的各种准备下,成分提取方法的判别力得到了认可。LBP以79.6%的正常精度优于HOG包括提取策略,但计算成本仍然很高。相反,从我们的结果中发现,HOG方法提供了较低的表征时间,正常精度为59.3%。
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