Toward automated tongue fur detection on the smartphone under different lighting conditions

碩士 === 國立成功大學 === 資訊工程學系 === 104 === Tongue fur is an important objective basis for clinical diagnosis and treatment in western medicine and tongue diagnosis for Chinese medicine. Given the high penetration and built-in sensors of smartphones, and the need for continuous monitoring of health condi...

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Main Authors: Ming-HsunCheng, 鄭名訓
Other Authors: Kun-Chan Lan
Format: Others
Language:en_US
Published: 2016
Online Access:http://ndltd.ncl.edu.tw/handle/85912876016110471897
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spelling ndltd-TW-104NCKU53920992017-10-29T04:35:12Z http://ndltd.ncl.edu.tw/handle/85912876016110471897 Toward automated tongue fur detection on the smartphone under different lighting conditions 智慧型手機於不同光源條件下的自動舌苔特徵偵測 Ming-HsunCheng 鄭名訓 碩士 國立成功大學 資訊工程學系 104 Tongue fur is an important objective basis for clinical diagnosis and treatment in western medicine and tongue diagnosis for Chinese medicine. Given the high penetration and built-in sensors of smartphones, and the need for continuous monitoring of health conditions, we propose an automatic tongue diagnosis framework on smartphone. However, tongue images taken by smartphone are quite different in color due to various lighting conditions, so we have to solve this problem to detect the correct tongue furs. In previous work mentioned that their tongue diagnosis systems are set up in a constrained well-controlled environment (e.g. with fixed lighting condition), but we purpose to let users make tongue diagnosis with their own smartphones no matter where they are. Therefore, we provide a way to detect tongue furs under different lighting conditions (e.g. fluorescent, halogen, and incandescent illuminant) by the combination of series methods : 1. Lighting condition estimation, 2. Tongue image color correction 3. Tongue fur (white fur) detection. We use the SVM to estimate the lighting condition and do the color correction with the corresponding correction matrix for current lighting condition. After getting the corrected tongue images, we use the detection model training by SVM to detect the white fur region in corrected tongue images. In this thesis, we propose a lighting condition estimation method according to color difference of tongue images taken with and without flash on the smartphone under different lighting condition; we also verify that it need to search corresponding parameter of correction matrix for color correction depend on different lighting condition; finally, we observe that the overlap rate of corrected tongue images for Hal. and Inc. lighting has been clearly upgraded with our correction parameter and the white fur can be identify if the overlap rate of corrected tongue images exceed 60%. Kun-Chan Lan Min-Chun Hu 藍崑展 胡敏君 2016 學位論文 ; thesis 56 en_US
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description 碩士 === 國立成功大學 === 資訊工程學系 === 104 === Tongue fur is an important objective basis for clinical diagnosis and treatment in western medicine and tongue diagnosis for Chinese medicine. Given the high penetration and built-in sensors of smartphones, and the need for continuous monitoring of health conditions, we propose an automatic tongue diagnosis framework on smartphone. However, tongue images taken by smartphone are quite different in color due to various lighting conditions, so we have to solve this problem to detect the correct tongue furs. In previous work mentioned that their tongue diagnosis systems are set up in a constrained well-controlled environment (e.g. with fixed lighting condition), but we purpose to let users make tongue diagnosis with their own smartphones no matter where they are. Therefore, we provide a way to detect tongue furs under different lighting conditions (e.g. fluorescent, halogen, and incandescent illuminant) by the combination of series methods : 1. Lighting condition estimation, 2. Tongue image color correction 3. Tongue fur (white fur) detection. We use the SVM to estimate the lighting condition and do the color correction with the corresponding correction matrix for current lighting condition. After getting the corrected tongue images, we use the detection model training by SVM to detect the white fur region in corrected tongue images. In this thesis, we propose a lighting condition estimation method according to color difference of tongue images taken with and without flash on the smartphone under different lighting condition; we also verify that it need to search corresponding parameter of correction matrix for color correction depend on different lighting condition; finally, we observe that the overlap rate of corrected tongue images for Hal. and Inc. lighting has been clearly upgraded with our correction parameter and the white fur can be identify if the overlap rate of corrected tongue images exceed 60%.
author2 Kun-Chan Lan
author_facet Kun-Chan Lan
Ming-HsunCheng
鄭名訓
author Ming-HsunCheng
鄭名訓
spellingShingle Ming-HsunCheng
鄭名訓
Toward automated tongue fur detection on the smartphone under different lighting conditions
author_sort Ming-HsunCheng
title Toward automated tongue fur detection on the smartphone under different lighting conditions
title_short Toward automated tongue fur detection on the smartphone under different lighting conditions
title_full Toward automated tongue fur detection on the smartphone under different lighting conditions
title_fullStr Toward automated tongue fur detection on the smartphone under different lighting conditions
title_full_unstemmed Toward automated tongue fur detection on the smartphone under different lighting conditions
title_sort toward automated tongue fur detection on the smartphone under different lighting conditions
publishDate 2016
url http://ndltd.ncl.edu.tw/handle/85912876016110471897
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