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Plant Species Classification Using Leaf Edge Feature Combination with Morphological Transformations and SIFT Key Point

Jiraporn Thomkaew, Sarun Intakosum

2023Journal of Image and Graphics18 citationsDOIOpen Access PDF

Abstract

This paper presents a new approach to plant classification by using leaf edge feature combination with Morphological Transformations and defining key points on leaf edge with SIFT. There are three steps in the process. Image preprocessing, feature extraction, and image classification. In the image preprocessing step, image noise is removed with Morphological Transformations and leaf edge detect with Canny Edge Detection. The leaf edge is identified with SIFT, and the plant leaf feature was extracted by CNN according to the proposed method. The plant leaves are then classified by random forest. Experiments were performed on the PlantVillage dataset of 10 classes, 5 classes of healthy leaves, and 5 classes of diseased leaves. The results showed that the proposed method was able to classify plant species more accurately than using features based on leaf shape and texture. The proposed method has an accuracy of 95.62%.

Topics & Concepts

Scale-invariant feature transformPattern recognition (psychology)Artificial intelligenceCanny edge detectorPreprocessorFeature (linguistics)Feature extractionEdge detectionComputer scienceEnhanced Data Rates for GSM EvolutionMathematicsComputer visionImage processingImage (mathematics)LinguisticsPhilosophySmart Agriculture and AIRemote Sensing and Land Use
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