Deep Stacked Autoencoder-Based Automatic Emotion Recognition Using an Efficient Hybrid Local Texture Descriptor

Shanthi Pitchaiyan, N. Savarimuthu
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Abstract

Extracting an effective facial feature representation is the critical task for an automatic expression recognition system. Local Binary Pattern (LBP) is known to be a popular texture feature for facial expression recognition. However, only a few approaches utilize the relationship between local neighborhood pixels itself. This paper presents a Hybrid Local Texture Descriptor (HLTD) which is derived from the logical fusion of Local Neighborhood XNOR Patterns (LNXP) and LBP to investigate the potential of positional pixel relationship in automatic emotion recognition. The LNXP encodes texture information based on two nearest vertical and/or horizontal neighboring pixel of the current pixel whereas LBP encodes the center pixel relationship of the neighboring pixel. After logical feature fusion, the Deep Stacked Autoencoder (DSA) is established on the CK+, MMI and KDEF-dyn dataset and the results show that the proposed HLTD based approach outperforms many of the state of art methods with an average recognition rate of 97.5% for CK+, 94.1% for MMI and 88.5% for KDEF.
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基于深度堆叠自编码器的高效混合局部纹理描述子的自动情感识别
提取有效的面部特征表示是自动表情识别系统的关键任务。局部二值模式(LBP)是人脸表情识别中常用的纹理特征。然而,只有少数方法利用了局部邻域像素本身之间的关系。本文提出了一种混合局部纹理描述子(HLTD),该描述子将局部邻域XNOR模式(LNXP)和LBP模式进行逻辑融合,用于研究位置像素关系在自动情感识别中的潜力。LNXP基于当前像素的两个最近的垂直和/或水平相邻像素编码纹理信息,而LBP基于相邻像素的中心像素关系编码纹理信息。在逻辑特征融合后,在CK+、MMI和KDEF-dyn数据集上建立了深度堆叠自编码器(DSA),结果表明,基于HLTD的方法优于许多最先进的方法,CK+的平均识别率为97.5%,MMI为94.1%,KDEF为88.5%。
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