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Contentbased Microscopic Image Analysis 1st Edition Chen Li

  • SKU: BELL-51672062
Contentbased Microscopic Image Analysis 1st Edition Chen Li
$ 31.00 $ 45.00 (-31%)

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Contentbased Microscopic Image Analysis 1st Edition Chen Li instant download after payment.

Publisher: Logos Verlag Berlin
File Extension: PDF
File size: 2.53 MB
Pages: 198
Author: Chen Li
ISBN: 9783832588106, 3832588108
Language: English
Year: 2016
Edition: 1

Product desciption

Contentbased Microscopic Image Analysis 1st Edition Chen Li by Chen Li 9783832588106, 3832588108 instant download after payment.

In this dissertation, novel Content-based Microscopic Image Analysis (CBMIA) methods, including Weakly Supervised Learning (WSL), are proposed to aid biological studies. In a CBMIA task, noisy image, image rotation, and object recognition problems need to be addressed. To this end, the first approach is a general supervised learning method, which consists of image segmentation, shape feature extraction, classification, and feature fusion, leading to a semi-automatic approach. In contrast, the second approach is a WSL method, which contains Sparse Coding (SC) feature extraction, classification, and feature fusion, leading to a full-automatic approach. In this WSL approach, the problems of noisy image and object recognition are jointly resolved by a region-based classifier, and the image rotation problem is figured out through SC features. To demonstrate the usefulness and potential of the proposed methods, experiments are implemented on different practical biological tasks, including environmental microorganism classification, stem cell analysis, and insect tracking.

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