Title of article :
Identification of Chinese Materia Medicas in Microscopic Powder Images
Author/Authors :
Yan, Shen Tsinghua University - Department of Computer Science, China , Li, Yaoli Peking University - School of Pharmaceutical Sciences, China , Song, Yixu Tsinghua University - Department of Computer Science, China , Lin, Li Peking University - School of Pharmaceutical Sciences, China , Jia, Peifa Peking University - School of Pharmaceutical Sciences, China , Cai, Shaoqing Tsinghua University - Department of Computer Science, China
From page :
209
To page :
217
Abstract :
This paper describes an identification system for Chinese Materia Medicas (CMMs) in microscopic powder images. The imaging processing of the microscopic powder image is very complex because of the low contrast, blurry boundaries, overlapping objects, and messy background. Therefore, the object detection must segment the significant microscopic structures from the complex image. The objects are detected in these images using an adaptable interactive method. After identifying the significant microscopic structures, the system identifies 14 features belonging to three main characteristics. These features form a 14-dimensional vector that represents the microscopic structures. The multi-dimensional vector is then analyzed using a feature assignment algorithm that picks the most notable features to construct a decision tree with thresholds. The identification system consists of a coarse classifier based on the decision tree and a fine classifier using similarity measurements to rank the possible results. Tests on 528 images from 24 different kinds of microscopic structures show the system effectiveness and applicability.
Keywords :
Chinese Materia Medicas , microscopic characteristics , microscopic images , object detection , texture characteristics
Journal title :
Tsinghua Science and Technology
Journal title :
Tsinghua Science and Technology
Record number :
2535458
Link To Document :
بازگشت