IEEE Trans Image Process. 2013 Dec;22(12):4809-24. doi: 10.1109/TIP.2013.2278461. Epub 2013 Aug 15.
In this paper, we propose a novel feature adaptive co-segmentation method that can learn adaptive features of different image groups for accurate common objects segmentation. We also propose image complexity awareness for adaptive feature learning. In the proposed method, the original images are first ranked according to the image complexities that are measured by superpixel changing cue and object detection cue. Then, the unsupervised segments of the simple images are used to learn the adaptive features, which are achieved using an expectation-minimization algorithm combining l 1-regularized least squares optimization with the consideration of the confidence of the simple image segmentation accuracies and the fitness of the learned model. The error rate of the final co-segmentation is tested by the experiments on different image groups and verified to be lower than the existing state-of-the-art co-segmentation methods.
在本文中,我们提出了一种新颖的特征自适应协同分割方法,该方法可以学习不同图像组的自适应特征,从而实现准确的公共对象分割。我们还提出了图像复杂度感知的自适应特征学习方法。在提出的方法中,首先根据超像素变化线索和目标检测线索测量的图像复杂度对原始图像进行排序。然后,使用基于期望最大化算法的自适应特征学习方法,该算法结合了 l1-正则化最小二乘优化,并考虑了简单图像分割精度的置信度和学习模型的适应性。通过在不同图像组上的实验测试了最终协同分割的错误率,并验证其低于现有的协同分割方法。