PColorNet: investigating the impact of different color spaces for pathological image classification

Author(s):  
Shamima Nasrin ◽  
Zahangir Alom ◽  
Tarek M. Taha ◽  
Vijayan K. Asari
2020 ◽  
Author(s):  
Dalí Dos Santos ◽  
Adriano Silva ◽  
Paulo De Faria ◽  
Bruno Travençolo ◽  
Marcelo Do Nascimento

Oral epithelial dysplasia is a common precancerous lesion type that can be graded as mild, moderate and severe. Although not all oral epithelial dysplasia become cancer over time, this premalignant condition has a significant rate of progressing to cancer and the early treatment has been shown to be considerably more successful. The diagnosis and distinctions between mild, moderate, and severe grades are made by pathologists through a complex and time-consuming process where some cytological features, including nuclear shape, are analysed. The use of computer-aided diagnosis can be applied as a tool to aid and enhance the pathologist decisions. Recently, deep learning based methods are earning more and more attention and have been successfully applied to nuclei segmentation problems in several scenarios. In this paper, we evaluated the impact of different color spaces transformations for automated nuclei segmentation on histological images of oral dysplastic tissues using fully convolutional neural networks (CNN). The CNN were trained using different color spaces from a dataset of tongue images from mice diagnosed with oral epithelial dysplasia. The CIE L*a*b* color space transformation achieved the best averaged accuracy over all analyzed color space configurations (88.2%). The results show that the chrominance information, or the color values, does not play the most significant role for nuclei segmentation purpose on a mice tongue histopathological images dataset.


2015 ◽  
Vol 14 (2) ◽  
pp. 80
Author(s):  
Gede Sukadarmika ◽  
Dewa Made Wiharta ◽  
Nyoman Putra Sastra

The object trace has been a problem in estimating an object position when the object is moving due to the heavy influence of the uncertainty. Many researcher claim that color histogram is reliable feature to represent this object. . Different investigators use different color spaces in conducting research on tracking the object. So, there is no numerical comparison of the impact of the use of different color spaces to the successful tracking. This study compare the performance of tracking an object by using a different color space i.e.: RGB, HSV, and CIELAB. The performance is shown numerically by comparing the actual position of the object with the results of the estimation.


2004 ◽  
Vol 10 (1) ◽  
pp. 23-30 ◽  
Author(s):  
Maojun Zhang ◽  
Nicolas D. Georganas

2001 ◽  
Author(s):  
J. Birgitta Martinkauppi ◽  
Maricor N. Soriano ◽  
Mika V. Laaksonen

IEEE Access ◽  
2019 ◽  
Vol 7 ◽  
pp. 27389-27400 ◽  
Author(s):  
Wilson Castro ◽  
Jimy Oblitas ◽  
Miguel De-La-Torre ◽  
Carlos Cotrina ◽  
Karen Bazan ◽  
...  

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