为面部合成系统增加整体尺寸

C. Frowd, V. Bruce, A. McIntyre, P. Hancock
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引用次数: 20

摘要

面部合成材料通常是由犯罪证人通过描述嫌疑人的面部,然后从一组部件中选择面部特征来构建的。不幸的是,当以这种方式生产时,复合材料的识别非常差。相比之下,越来越多的证据表明,其他更基于识别的方法可以产生更像嫌疑人的图像。例如,在EvoFIT系统中,目击者可以看到一组完整的面孔,并通过选择和繁殖过程“进化”出一种合成物。目前的工作是通过开发一套心理上有用的“旋钮”来增强EvoFIT,这些“旋钮”可以根据面部体重、男子气概和年龄等维度来操纵面部。这些整体维度是通过增加底层人脸模型的大小和可变性来实现的,并获得感知评级,以便对空间进行适当的矢量化。两项评价表明,新的层面运作良好
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Adding holistic dimensions to a facial composite system
Facial composites are typically constructed by witnesses to crime by describing a suspect's face and then selecting facial features from a kit of parts. Unfortunately, when produced in this way, composites are very poorly identified. In contrast, there is mounting evidence that other, more recognition-based approaches can produce a much better likeness of a suspect. With the EvoFIT system, for example, witnesses are presented with sets of complete faces and a composite is `evolved' through a process of selection and breeding. The current work serves to augment EvoFIT by developing a set of psychologically useful `knobs' that allow faces to be manipulated along dimensions such as facial weight, masculinity, and age. These holistic dimensions were implemented by increasing the size and variability of the underlying face model and obtaining perceptual ratings so that the space could be suitably vectorised. Two evaluations suggested that the new dimensions were operating appropriately
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