Abdominal palpation characterization using computer vision
This study intends to develop a tracking algorithm that will segment the hand from the skin using real time multicolor space segmentation. The tracking system uses keypoints and descriptors as its feature extraction. The system will work on different skin colors, namely, fair, brown, and dark. The g...
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oai:animorepository.dlsu.edu.ph:etd_bachelors-39752021-10-29T01:19:56Z Abdominal palpation characterization using computer vision Rosaldo, Aeysol F. This study intends to develop a tracking algorithm that will segment the hand from the skin using real time multicolor space segmentation. The tracking system uses keypoints and descriptors as its feature extraction. The system will work on different skin colors, namely, fair, brown, and dark. The generalization of these levels used calibrated weights as its basis on how much force the user needs to exert to his hand while palpating. Its measurement is in terms of grams. The result of experimenting with how much force is the light palpation ranges from 0 to 1.25 kilograms. Medium level palpation ranges from 1.25 to 1.75 kilograms while deep level palpation starts from 1.75 kilograms and above. The system will also differentiate the levels of palpation with the force exerted by the hand. The levels of palpation that were used in this study are light, medium, and deep. Support Vector Machine (SVM) was used in separating the levels of palpation from each other. SVM is an algorithm that sorts out the features that belong to a group and acts as an efficient classification method. In each of the datasets, the person who is palpating uses different combinations of palpation level throughout the video. This tested the system's effectiveness on how it can handle the levels of palpation while also using the system in different skin colors. 2016-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_bachelors/2975 Bachelor's Theses English Animo Repository Palpation Computer vision Computer vision in medicine Computer Engineering |
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This study intends to develop a tracking algorithm that will segment the hand from the skin using real time multicolor space segmentation. The tracking system uses keypoints and descriptors as its feature extraction. The system will work on different skin colors, namely, fair, brown, and dark. The generalization of these levels used calibrated weights as its basis on how much force the user needs to exert to his hand while palpating. Its measurement is in terms of grams. The result of experimenting with how much force is the light palpation ranges from 0 to 1.25 kilograms. Medium level palpation ranges from 1.25 to 1.75 kilograms while deep level palpation starts from 1.75 kilograms and above.
The system will also differentiate the levels of palpation with the force exerted by the hand. The levels of palpation that were used in this study are light, medium, and deep. Support Vector Machine (SVM) was used in separating the levels of palpation from each other. SVM is an algorithm that sorts out the features that belong to a group and acts as an efficient classification method. In each of the datasets, the person who is palpating uses different combinations of palpation level throughout the video. This tested the system's effectiveness on how it can handle the levels of palpation while also using the system in different skin colors. |
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text |
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Rosaldo, Aeysol F. |
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Rosaldo, Aeysol F. |
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Rosaldo, Aeysol F. |
title |
Abdominal palpation characterization using computer vision |
title_short |
Abdominal palpation characterization using computer vision |
title_full |
Abdominal palpation characterization using computer vision |
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Abdominal palpation characterization using computer vision |
title_full_unstemmed |
Abdominal palpation characterization using computer vision |
title_sort |
abdominal palpation characterization using computer vision |
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Animo Repository |
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2016 |
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https://animorepository.dlsu.edu.ph/etd_bachelors/2975 |
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