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Integrated state evaluation for the images of crystallization droplets utilizing linear and nonlinear classifiers

Kuniaki Kawabata, Kanako Saitoh, M. Takahashi, Mitsuaki Sugahara, Hajime Asama, Taketoshi Mishima, Masashi Miyano

发表年份
2006
引用次数
6

摘要

In a usual crystallization process, the researchers evaluate the protein crystallization growth states based on visual impressions and repeatedly assign scores throughout the growth process. Although the development of crystallization robotic systems has generally realised the automation of the setup and storage of crystallization samples, evaluation of crystallization states has not yet been completely automated. The method presented here attempts to categorize individual crystallization droplet images into five classes using multiple classifiers. In particular, linear and nonlinear classifiers are utilized. The algorithm is comprised of pre-processing, feature extraction from images using texture analysis and a categorization process using linear discriminant analysis (LDA) and support vector machine (SVM). The performance of this method has been evaluated by comparing the results obtained using the method with the results obtained by a human expert and the concordance rate was 84.4%.

关键词

CrystallizationSupport vector machineLinear discriminant analysisArtificial intelligenceProcess (computing)AutomationComputer scienceCategorizationPattern recognition (psychology)Nonlinear system

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