IEEE Trans Cybern. 2013 Dec;43(6):2170-8. doi: 10.1109/TCYB.2013.2243432.
Image segmentation still remains as a challenge in image processing and pattern recognition when involving complex natural scenes. In this paper, we present a new affinity model for spectral segmentation based on midlevel cues. In contrast to most existing methods that operate directly on low-level cues, we first oversegment the image into superpixel images and then integrate the geodesic line edge and intensity cue to form the similarity matrix W so that it more accurately describes the similarity between data. The geodesic line edge could avoid strong boundary and represent the true boundary between two superpixels while the mean red green blue vector could describe the intensity of superpixels better. As far as we know, this is a totally new kind of affinity model to represent superpixels. Based on this model, we use the spectral clustering in the superpixel level and then achieve the image segmentation in the pixel level. The experimental results show that the proposed method performs steadily and well on various natural images. The evaluation comparisons also prove that our method achieves comparable accuracy and significantly performs better than most state-of-the-art algorithms.
在涉及复杂自然场景的图像处理和模式识别中,图像分割仍然是一个挑战。在本文中,我们提出了一种基于中层线索的新的光谱分割亲和模型。与大多数直接在低水平线索上操作的现有方法不同,我们首先将图像过分割为超像素图像,然后将测地线边缘和强度线索集成到相似性矩阵 W 中,以便更准确地描述数据之间的相似性。测地线边缘可以避免强边界,并表示两个超像素之间的真实边界,而平均红、绿、蓝向量可以更好地描述超像素的强度。据我们所知,这是一种全新的表示超像素的亲和模型。基于这个模型,我们在超像素级别使用谱聚类,然后在像素级别实现图像分割。实验结果表明,该方法在各种自然图像上表现稳定且良好。评估比较也证明了我们的方法达到了可比的精度,并明显优于大多数最先进的算法。