Rivera Samuel, Martinez Aleix
Pattern Recognit. 2012 Apr;45(4):1792-1801. doi: 10.1016/j.patcog.2011.09.023.
We propose an approach to shape detection of highly deformable shapes in images via manifold learning with regression. Our method does not require shape key points be defined at high contrast image regions, nor do we need an initial estimate of the shape. We only require sufficient representative training data and a rough initial estimate of the object position and scale. We demonstrate the method for face shape learning, and provide a comparison to nonlinear Active Appearance Model. Our method is extremely accurate, to nearly pixel precision and is capable of accurately detecting the shape of faces undergoing extreme expression changes. The technique is robust to occlusions such as glasses and gives reasonable results for extremely degraded image resolutions.
我们提出了一种通过带回归的流形学习来检测图像中高度可变形形状的方法。我们的方法不需要在高对比度图像区域定义形状关键点,也不需要形状的初始估计。我们只需要足够的代表性训练数据以及物体位置和比例的粗略初始估计。我们展示了该方法用于面部形状学习,并与非线性主动外观模型进行了比较。我们的方法极其精确,接近像素精度,并且能够准确检测经历极端表情变化的面部形状。该技术对眼镜等遮挡具有鲁棒性,并且对于极低分辨率的图像也能给出合理的结果。