KNN ALGORITHM IN A FRAMEWORK OF SCALE-SPACE THEORY FOR RETINAL IMAGE ANALYSIS
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Creator 1. Krit Inthajak
2. Cattleya Duanggate
3. Bunyarit Uyyanovara
4. Stanislav Makhanov
Title KNN ALGORITHM IN A FRAMEWORK OF SCALE-SPACE THEORY FOR RETINAL IMAGE ANALYSIS
Publisher Suaranaree University of Technology
Publication Year 2557
Journal Title Suranaree Journal of Science and Technology
Journal Vol. 21
Journal No. 2
Page no. 87-96
Keyword Feature stability, K-nearest neighbor, object detection, scale-space
ISSN 0858-849X
Abstract This topic presents a framework in the uses of the K-nearest neighbor algorithm in evaluating an object detection method of scale-space theory with feature stability. A scale-space tree is constructed based on the blobs that were created from a series of images after the blurring process. Features and spatial information provide the role within the scale-space tree construction. After the process of blob extraction, users determine each type of the blob that was detected within the image by distinguishing classes to create ground truth image data. Within the same process, the KNN algorithm is applied to distinguish classes of the image
SURANAREE JOURNAL OF SCIENCE AND TECHNOLOGY

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