基于自适应K-means和GrabCut算法的目标分割

P. S., J. K.
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引用次数: 5

摘要

图像分割是图像处理领域的一个热点问题,一直是图像处理技术研究的热点和焦点。本文提出了一种混合分割方法,将自适应K-Means聚类算法与一种新的自动GrabCut分割算法相结合,以提高从场景图像中分割目标的性能。该方法分为六个步骤:首先,引入RGB图像归一化步骤,消除光线变化,去除明亮和阴影区域;其次,将RGB色彩空间转换为L⃰a⃰b⃰色彩空间,以保持准确的色彩平衡。第三,提出了一种新的自动分割算法,消除了用户交互,提高了分割速度。第四,结合自适应K-Means聚类算法和自动GrabCut分割算法,从背景中分割出前景目标。第五步,利用形状细化步骤消除分割图像中的遮挡、噪声和涂抹问题。最后,进行形态学操作以提高分割性能。使用MSRA基准数据集对混合分割方法的性能进行了评估。
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Object Segmentation Based on the Integration of Adaptive K-means and GrabCut Algorithm
Image segmentation is a well-known topic in image processing, and it remains as a hotspot and focal point for image processing techniques. In this paper, we propose a hybrid segmentation method, combining an Adaptive K-Means clustering algorithm and a novel automatic GrabCut segmentation algorithm to improve the performance of the object segmentation from the scene image. The proposed method is divided into six steps: Firstly, the RGB image normalization step is introduced to eliminate light variation and remove bright and shaded regions. Secondly, RGB colour space is converted to L⃰a⃰b⃰ colour space to maintain accurate colour balance. Thirdly, we propose a novel automatic GrabCut segmentation algorithm to eliminate user interaction and make the segmentation process faster. Fourthly, the Adaptive K-Means clustering algorithm and the proposed automatic GrabCut segmentation algorithm are combined to segment foreground objects from the background. Fifthly, the shape refinement step is used to eliminate occlusion, noise, and smear issues from the segmented image. Finally, morphological operations are carried out to enhance the segmentation performance. The performance of the hybrid segmentation method is assessed using the MSRA benchmark dataset.
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