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Log-Normal and Log-Gabor descriptors for expressive events detection and facial features segmentation

机译:对数正态和对数Gabor描述符用于表情事件检测和面部特征分割

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The current paper investigates the merits of the Log-Normal and Log-Gabor filters for the dynamic analysis and segmentation of facial behavior during facial expression sequences. First, a spatial filtering method based on the Log-Normal filters is introduced for the holistic processing of the face towards the automatic segmentation of consecutive "emotional segments" in video sequences. Secondly, a filtering-based method based on the Log-Gabor filters is applied as a feature-based processing for the automatic and accurate segmentation of the transient facial features (such as nasal root wrinkles and nasolabial furrows) and a precise estimation of their orientation in a single pass. We compared heuristic and machine learning based methods to evaluate the efficiency of the used descriptors for each task. When tested for automatic detection of "emotional segments" in 137 video sequences from the MMI, the Hammal-Caplier facial expression databases, and 20 recorded video sequences of consecutive appearance of multiple facial expressions, the proposed Log-Normal based descriptors achieved an accuracy of 89% with a mean frame error of 8 frames using a heuristic based processing. Higher performances were obtained using the SVM based method leading to an accuracy of 94% with a mean frame error detection of 3.1 frames. Tested on more than 3280 images from 5 benchmark databases (i.e. the Cohn- Kanade database, the CAFE database, the STOIC database, the MMI database, and the Hammal- Caplier database) the proposed Log-Gabor based descriptors for transient facial features detection achieved a mean performance of 82% using a heuristic based processing and a mean performance of 96% using the SVM based classification. The proposed method for the estimation of the corresponding orientation leads to an error of 2.7°.
机译:本文研究了Log-Normal和Log-Gabor过滤器在面部表情序列中动态分析和分割面部行为的优点。首先,介绍了一种基于对数正态滤波器的空间滤波方法,用于对视频序列中连续的“情感段”的自动分割进行人脸的整体处理。其次,将基于Log-Gabor过滤器的基于过滤的方法用作基于特征的处理,以对瞬态面部特征(例如鼻根皱纹和鼻唇沟)进行自动和准确的分割,并精确估计其方向单次通过。我们比较了启发式和基于机器学习的方法,以评估每个任务使用的描述符的效率。在测试自动检测来自MMI,Hammal-Caplier面部表情数据库的137个视频序列中的“情感片段”以及连续记录多个面部表情的20个记录的视频序列时,建议的基于对数正态的描述符达到了89%的平均帧错误使用基于启发式的处理为8帧。使用基于SVM的方法可获得更高的性能,导致94%的精度和3.1帧的平均帧错误检测。在来自5个基准数据库(即Cohn-Kanade数据库,CAFE数据库,STOIC数据库,MMI数据库和Hammal-Caplier数据库)的3280张图像上进行了测试,提出了基于Log-Gabor的用于瞬时面部特征检测的描述符使用基于启发式处理的平均性能为82%,使用基于SVM的分类的平均性能为96%。所提出的用于估计相应取向的方法导致2.7°的误差。

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