Litcius/Paper detail

Grape leaf image disease classification using CNN-VGG16 model

Moh. Arie Hasan, Yan Riyanto, Dwiza Riana

2021Jurnal Teknologi dan Sistem Komputer28 citationsDOIOpen Access PDF

Abstract

This study aims to classify the disease image on grape leaves using image processing. The segmentation uses the k-means clustering algorithm, the feature extraction process uses the VGG16 transfer learning technique, and the classification uses CNN. The dataset is from Kaggle of 4000 grape leaf images for four classes: leaves with black measles, leaf spot, healthy leaf, and blight. Google images of 100 pieces were also used as test data outside the dataset. The accuracy of the CNN model training is 99.50 %. The classification yields an accuracy of 97.25 % using the test data, while using test image data outside the dataset obtains an accuracy of 95 %. The designed image processing method can be applied to identify and classify disease images on grape leaves.

Topics & Concepts

Artificial intelligencePattern recognition (psychology)Computer scienceCluster analysisImage processingFeature extractionImage segmentationContextual image classificationSegmentationImage (mathematics)Smart Agriculture and AIComputer Science and EngineeringForest Ecology and Conservation