Title :
Patch-Based Evaluation of Image Segmentation
Author :
Ledig, Christian ; Wenzhe Shi ; Wenjia Bai ; Rueckert, Daniel
Author_Institution :
Dept. of Comput., Imperial Coll. London, London, UK
Abstract :
The quantification of similarity between image segmentations is a complex yet important task. The ideal similarity measure should be unbiased to segmentations of different volume and complexity, and be able to quantify and visualise segmentation bias. Similarity measures based on overlap, e.g. Dice score, or surface distances, e.g. Hausdorff distance, clearly do not satisfy all of these properties. To address this problem, we introduce Patch-based Evaluation of Image Segmentation (PEIS), a general method to assess segmentation quality. Our method is based on finding patch correspondences and the associated patch displacements, which allow the estimation of segmentation bias. We quantify both the agreement of the segmentation boundary and the conservation of the segmentation shape. We further assess the segmentation complexity within patches to weight the contribution of local segmentation similarity to the global score. We evaluate PEIS on both synthetic data and two medical imaging datasets. On synthetic segmentations of different shapes, we provide evidence that PEIS, in comparison to the Dice score, produces more comparable scores, has increased sensitivity and estimates segmentation bias accurately. On cardiac magnetic resonance (MR) images, we demonstrate that PEIS can evaluate the performance of a segmentation method independent of the size or complexity of the segmentation under consideration. On brain MR images, we compare five different automatic hippocampus segmentation techniques using PEIS. Finally, we visualise the segmentation bias on a selection of the cases.
Keywords :
biomedical MRI; data visualisation; image segmentation; medical image processing; PEIS; automatic hippocampus segmentation technique; brain MR images; cardiac MR images; cardiac magnetic resonance images; global score; local segmentation similarity; medical imaging datasets; patch correspondences; patch displacement; patch-based evaluation of image segmentation; segmentation bias estimation; segmentation bias visualisation; segmentation boundary agreement; segmentation complexity assessment; segmentation quality assessment; segmentation shape conservation; similarity measure; synthetic data; Biomedical imaging; Complexity theory; Image segmentation; Indexes; Optimization; Shape; Visualization; evaluation; image segmentation; medical; patch-based; similarity measure;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location :
Columbus, OH
DOI :
10.1109/CVPR.2014.392