Department of Information Science and Electronic Engineering, Zhejiang University, Hangzhou 310027, China.
IEEE Trans Image Process. 2013 Mar;22(3):992-1004. doi: 10.1109/TIP.2012.2226044. Epub 2012 Oct 22.
In this paper, a novel variational model based on prior shapes for simultaneous object classification and segmentation is proposed. Given a set of training shapes of multiple object classes, a sparse linear combination of training shapes in a low-dimensional representation is used to regularize the target shape in variational image segmentation. By minimizing the proposed variational functional, the model is able to automatically select the reference shapes that best represent the object by sparse recovery and accurately segment the image, taking into account both the image information and the shape priors. For some applications under an appropriate size of training set, the proposed model allows artificial enlargement of the training set by including a certain number of transformed shapes for transformation invariance, and then the model remains jointly convex and can handle the case of overlapping or multiple objects presented in an image within a small range. Numerical experiments show promising results and the potential of the method for object classification and segmentation.
本文提出了一种基于先验形状的新颖变分模型,用于同时进行目标分类和分割。给定多类目标形状的一组训练形状,通过稀疏线性组合低维表示中的训练形状来正则化变分图像分割中的目标形状。通过最小化所提出的变分泛函,该模型能够通过稀疏恢复自动选择最佳代表目标的参考形状,并准确地分割图像,同时考虑图像信息和形状先验。对于一些在适当训练集大小下的应用,所提出的模型允许通过包含一定数量的变换形状来人为扩大训练集,以实现变换不变性,然后模型仍然保持联合凸性,可以处理图像中存在的小范围重叠或多个目标的情况。数值实验表明该方法在目标分类和分割方面具有良好的效果和潜力。