2014
DOI: 10.1109/tip.2014.2298981
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A New Iterative Triclass Thresholding Technique in Image Segmentation

Abstract: We present a new method in image segmentation that is based on Otsu's method but iteratively searches for subregions of the image for segmentation, instead of treating the full image as a whole region for processing. The iterative method starts with Otsu's threshold and computes the mean values of the two classes as separated by the threshold. Based on the Otsu's threshold and the two mean values, the method separates the image into three classes instead of two as the standard Otsu's method does. The first two… Show more

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Cited by 121 publications
(61 citation statements)
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“…In our previous study [20] and in the current study, we used an optimized thresholding technique based on pixel and voxel classification. Further research on kidney segmentation may take advantage of more sophisticated image-processing techniques, such as iterative triclass thresholding [26] to improve the robustness and accuracy of SRF and individual renal uptake measured with 99m Tc-DMSA SPECT.…”
Section: Discussionmentioning
confidence: 99%
“…In our previous study [20] and in the current study, we used an optimized thresholding technique based on pixel and voxel classification. Further research on kidney segmentation may take advantage of more sophisticated image-processing techniques, such as iterative triclass thresholding [26] to improve the robustness and accuracy of SRF and individual renal uptake measured with 99m Tc-DMSA SPECT.…”
Section: Discussionmentioning
confidence: 99%
“…Objects (mitochondria and cell bodies) were identified in these two frames using the CellProfiler software. The objects were identified using the three-class Otsu thresholding method [50]. The % area of pixels that spatially overlapped between the two segmented images was then calculated and defined as % co-localization area (Figure 12(b)).…”
Section: Experimental Methodsmentioning
confidence: 99%
“…The D s accepts feature set F summed from the last features of each main task's encoder and outputs a license plate segment with val-ues indicating the probability of pixels belonging to the license plate. Also, ground-truth labels for segmentation can be inferred from the dotted annotations by [4]'s method as Otsu Thresholding, as shown in Figure 3. Although our segmentation annotations by [4] do not fully reflect the actual detail appearance of an image, we have shown in the experiments that this auxiliary and straightforward learning strategy leads to effective advances in image recovery.…”
Section: Auxiliary Tasks Predictionmentioning
confidence: 99%