Quantitative testing of segmentation algorithms implies rigorous testing against ground-truth segmentations. Though under-reported in the literature, the performance of a segmentation algorithm depends on the choice of input parameters across core, pre- and post-processing stages. The paper highlights the importance of post-processing parameters when the figure of merit is the Berkeley F-measure. It also shows that the search of a parameter space with a genetic algorithm is not only accelerated through the inclusion of a time factor in the cost function but the relative importance of different parameters is highlighted. © 2011 IEEE
Abstract. Image segmentation is the first stage of processing in many practical computer vision syst...
In general, biologically-inspired multi-objective optimization algorithms comprise several parameter...
<p>The parameter sets that were used to perform the segmentation comparisons of OTSU, OTSUWW, GFT, G...
Automatic parameter selection for image segmentation is accelerated by means of a genetic algorithm ...
The performance of a segmentation algorithm can be evaluated by systematic comparison with hand-segm...
In this paper we address the difficult problem of parameter-finding in image segmentation. We replac...
Abstract—In this paper we address the difficult problem of parameter-finding in image segmentation. ...
While image segmentation makes up a vital step in the process of such tasks in the medical domain as...
International audienceSegGen [1] is a linear thematic segmentation algorithm grounded on a variant o...
SegGen [1] is a linear thematic segmentation algorithm grounded on a variant of the Strength Pareto ...
Abstract Many works in the literature focus on the definition of evaluation metrics and criteria tha...
Several range image segmentation algorithms have been proposed, each one to be tuned by a number of ...
Several range image segmentation algorithms have been proposed, each one to be tuned by a number of...
A great effort has been done during last years to improve range image segmentation results. The effi...
International audienceMany works in the literature focus on the definition of evaluation metrics and...
Abstract. Image segmentation is the first stage of processing in many practical computer vision syst...
In general, biologically-inspired multi-objective optimization algorithms comprise several parameter...
<p>The parameter sets that were used to perform the segmentation comparisons of OTSU, OTSUWW, GFT, G...
Automatic parameter selection for image segmentation is accelerated by means of a genetic algorithm ...
The performance of a segmentation algorithm can be evaluated by systematic comparison with hand-segm...
In this paper we address the difficult problem of parameter-finding in image segmentation. We replac...
Abstract—In this paper we address the difficult problem of parameter-finding in image segmentation. ...
While image segmentation makes up a vital step in the process of such tasks in the medical domain as...
International audienceSegGen [1] is a linear thematic segmentation algorithm grounded on a variant o...
SegGen [1] is a linear thematic segmentation algorithm grounded on a variant of the Strength Pareto ...
Abstract Many works in the literature focus on the definition of evaluation metrics and criteria tha...
Several range image segmentation algorithms have been proposed, each one to be tuned by a number of ...
Several range image segmentation algorithms have been proposed, each one to be tuned by a number of...
A great effort has been done during last years to improve range image segmentation results. The effi...
International audienceMany works in the literature focus on the definition of evaluation metrics and...
Abstract. Image segmentation is the first stage of processing in many practical computer vision syst...
In general, biologically-inspired multi-objective optimization algorithms comprise several parameter...
<p>The parameter sets that were used to perform the segmentation comparisons of OTSU, OTSUWW, GFT, G...