3.8 Proceedings Paper

An integrated approach using CNN-RNN-LSTM for classification of fruit images

期刊

MATERIALS TODAY-PROCEEDINGS
卷 51, 期 -, 页码 591-595

出版社

ELSEVIER
DOI: 10.1016/j.matpr.2021.06.016

关键词

CNN; RNN; LSTM; Integrated Approach; Fruit classification

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With the development of technology, computer and machine vision systems have been widely used in the agriculture sector. This article introduces a method that applies deep learning to fruit image classification, achieving higher accuracy by integrating CNN, RNN, and LSTM. Empirical results show that the proposed classification method is highly effective.
With the advancement in technology, Computer and machine vision system is getting involved in the agriculture sector for the last few years. Deep Learning is a recent advancement in the Artificial Intelligence field. In the present era, many researchers have used deep learning applications for the classification of images, and is found to be one of the emerging areas in computer vision. In the classification of fruit images, the main goal is to improve the accuracy of the classification system. The accuracy of the classifier depends on various factors like the nature of acquired images, the number of features, types of features, selection of optimal features from extracted features, and type of classifiers used. In the proposed article, integration of CNN, RNN, and LSTM for the classification of fruit images are defined. In this approach, CNN and RNN are employed for the development of discriminative characteristics and sequential-labels respectively. LSTM presents an explanation by integrating a memory cell to encode learning at each interval of classification. Key parameters: accuracy, F-measure, sensitivity, and specificity are applied to assess the achievement of the proposed scheme. From empirical results, it has been declared that the offered classification method provides efficient results.

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