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A supervised evaluation method based on region shape descriptor for image segmentation algorithm

机译:基于区域形状描述符的监督评估方法,用于图像分割算法

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In this paper we present a new supervised evaluation method for measuring the accuracy of image segmentation algorithms. This method calculates the extent of similarity between segmented images against ground truth. Feature vectors are computed based on the shape descriptor for each region in segmented image and then compared with the feature vectors of ground truth image. The proposed method can be used for any type of grayscale and color images with any number of regions. It also limits under-segmentation and over-segmentation problems. We compare the efficiency of the proposed method with extended version of four different supervised evaluation measures such as, global consistency error (GCE), local consistency error (LCE), object-level consistency error (OCE using Dice's coefficient) and the Jaccard index. Analysis of the experimental results on a large variety of test images from the Berkeley segmentation dataset demonstrates the efficiency of the proposed method.
机译:本文介绍了一种用于测量图像分割算法精度的新监督评估方法。该方法计算分段图像与地面真理之间的相似度的程度。基于分段图像中的每个区域的形状描述符计算特征向量,然后与地面真理图像的特征向量进行比较。所提出的方法可用于任何类型的灰度和彩色图像,具有任何数量的区域。它还限制了分割和过分分割问题。我们将提出的方法的效率与扩展版本的四种不同的监督评估措施(如全局一致性误差(GCE),局部一致性错误(LCE),对象级一致性错误(OCE使用骰子系数)和Jaccard索引进行了比较。对来自伯克利分割数据集的大量测试图像的实验结果分析表明了所提出的方法的效率。

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