Supervised Evaluation of Image Segmentation and Object Proposal Techniques | IEEE Journals & Magazine | IEEE Xplore

Supervised Evaluation of Image Segmentation and Object Proposal Techniques


Abstract:

This paper tackles the supervised evaluation of image segmentation and object proposal algorithms. It surveys, structures, and deduplicates the measures used to compare b...Show More

Abstract:

This paper tackles the supervised evaluation of image segmentation and object proposal algorithms. It surveys, structures, and deduplicates the measures used to compare both segmentation results and object proposals with a ground truth database; and proposes a new measure: the precision-recall for objects and parts. To compare the quality of these measures, eight state-of-the-art object proposal techniques are analyzed and two quantitative meta-measures involving nine state of the art segmentation methods are presented. The meta-measures consist in assuming some plausible hypotheses about the results and assessing how well each measure reflects these hypotheses. As a conclusion of the performed experiments, this paper proposes the tandem of precision-recall curves for boundaries and for objects-and-parts as the tool of choice for the supervised evaluation of image segmentation. We make the datasets and code of all the measures publicly available.
Page(s): 1465 - 1478
Date of Publication: 23 September 2015

ISSN Information:

PubMed ID: 26415155

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