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Facial Action Detection Using Block-Based Pyramid Appearance Descriptors

机译:使用基于块的金字塔外观描述符进行面部动作检测

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摘要

Facial expression is one of the most important non-verbal behavioural cues in social signals. Constructing an effective face representation from images is an essential step for successful facial behaviour analysis. Most existing face descriptors operate on the same scale, and do not leverage coarse v.s. fine methods such as image pyramids. In this work, we propose the sparse appearance descriptors Block-based Pyramid Local Binary Pattern (B-PLBP) and Block-based Pyramid Local Phase Quantisation (B-PLPQ). The effectiveness of our proposed descriptors is evaluated by a real-time facial action recognition system. The performance of B-PLBP and B-PLPQ is also compared with Block-based Local Binary Patterns (B-LBP) and Block-based Local Phase Quantisation (B-LPQ). The system proposed here enables detection a much larger range of facial behaviour by detecting 22 facial muscle actions (Action Units, AUs), which can be practically applied for social behaviour analysis and synthesis. Results show that our proposed descriptor B-PLPQ outperforms all other tested methods for the problem of FACS Action Unit analysis and that systems which utilise a pyramid representation outperform those that use basic appearance descriptors.
机译:面部表情是社交信号中最重要的非语言行为提示之一。从图像构建有效的面部表情是成功进行面部行为分析的重要步骤。大多数现有的面部描述符以相同的比例运行,并且不利用粗略的v.s。精细的方法,例如图像金字塔。在这项工作中,我们提出了基于块的金字塔局部二进制模式(B-PLBP)和基于块的金字塔局部相位量化(B-PLPQ)的稀疏外观描述符。我们提出的描述符的有效性通过实时面部动作识别系统进行评估。还将B-PLBP和B-PLPQ的性能与基于块的本地二进制模式(B-LBP)和基于块的本地相位量化(B-LPQ)进行了比较。这里提出的系统可以通过检测22种面部肌肉动作(动作单位,AU)来检测更大范围的面部行为,该动作实际上可以用于社会行为分析和综合。结果表明,针对FACS行动单元分析问题,我们提出的描述符B-PLPQ优于所有其他测试方法,并且使用金字塔表示法的系统优于使用基本外观描述符的系统。

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