论文标题
用于微表达分类的平均定向的Riesz特征
Mean Oriented Riesz Features for Micro Expression Classification
论文作者
论文摘要
微表达是短暂而微妙的面部表情,在一秒钟的时间内呈上下脸。这种面部表情通常发生在高利益情况下,被认为反映了人类的真正意图。但是,对微表达分析引起了一些兴趣,但是,绝大多数方法基于经典建立的计算机视觉方法,例如局部二进制模式,梯度直方图和光流。使用Riesz Pyramid进行了微表达识别的一种新型方法,提出了多尺度可辨的Hilbert Transform。实际上,使用此工具将图像序列转换,然后将图像相的变化提取并过滤为运动代理。此外,将Riesz变换的主要方向恒定构成被利用为平均微表达序列到图像对中。基于此,引入了平均面向的Riesz功能描述。最后,在两个自发的微表达数据库中测试了我们方法的性能,并将其与最新方法进行了比较。
Micro-expressions are brief and subtle facial expressions that go on and off the face in a fraction of a second. This kind of facial expressions usually occurs in high stake situations and is considered to reflect a human's real intent. There has been some interest in micro-expression analysis, however, a great majority of the methods are based on classically established computer vision methods such as local binary patterns, histogram of gradients and optical flow. A novel methodology for micro-expression recognition using the Riesz pyramid, a multi-scale steerable Hilbert transform is presented. In fact, an image sequence is transformed with this tool, then the image phase variations are extracted and filtered as proxies for motion. Furthermore, the dominant orientation constancy from the Riesz transform is exploited to average the micro-expression sequence into an image pair. Based on that, the Mean Oriented Riesz Feature description is introduced. Finally the performance of our methods are tested in two spontaneous micro-expressions databases and compared to state-of-the-art methods.