Publication | Closed Access
Comparative Study on Vision Based Rice Seed Varieties Identification
58
Citations
18
References
2015
Year
Unknown Venue
Precision AgricultureEngineeringFeature DetectionBotanyBiometricsAgricultural EconomicsCrop ImprovementImage ClassificationImage AnalysisPattern RecognitionMachine VisionOptical Image RecognitionComparative StudyAutomated ClassificationPlant BreedingComputer VisionHigh AccuracyCrop ScienceRemote SensingTexture AnalysisPattern Recognition Application
This paper presents a system for automated classification of rice variety for rice seed production using computer vision and image processing techniques. Rice seeds of different varieties are visually very similar in color, shape and texture that make the classification of rice seed varieties at high accuracy challenging. We investigated various feature extraction techniques for efficient rice seed image representation. We analyzed the performance of powerful classifiers on the extracted features for finding the robust one. Images of six different rice seed varieties in northern Vietnam were acquired and analyzed. Our experiments have demonstrated that the average accuracy of our classification system can reach 90.54% using Random Forest method with a simple feature extraction technique. This result can be used for developing a computer-aided machine vision system for automated assessment of rice seeds purity.
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