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Title: | A cascaded design of best features selection for fruit diseases recognition |
Authors: | Faiz Ali Shah Muhammad Attique Khan Muhammad Sharif Usman Tariq Aimal Khan Seifedine Kadry Orawit Thinnukool |
Authors: | Faiz Ali Shah Muhammad Attique Khan Muhammad Sharif Usman Tariq Aimal Khan Seifedine Kadry Orawit Thinnukool |
Keywords: | Computer Science;Engineering;Materials Science;Mathematics |
Issue Date: | 1-Jan-2021 |
Abstract: | Fruit diseases seriously affect the production of the agricultural sector, which builds financial pressure on the country's economy. The manual inspection of fruit diseases is a chaotic process that is both time and cost-consuming since it involves an accurate manual inspection by an expert. Hence, it is essential that an automated computerised approach is developed to recognise fruit diseases based on leaf images. According to the literature, many automated methods have been developed for the recognition of fruit diseases at the early stage.However, these techniques still face some challenges, such as the similar symptoms of different fruit diseases and the selection of irrelevant features. Image processing and deep learning techniques have been extremely successful in the last decade, but there is still room for improvement due to these challenges. Therefore, we propose a novel computerised approach in this work using deep learning and featuring an ant colony optimisation (ACO) based selection. The proposed method consists of four fundamental steps: Data augmentation to solve the imbalanced dataset, fine-tuned pretrained deep learning models (NasNetMobile andMobileNet-V2), the fusion of extracted deep features using matrix length, and finally, a selection of the best features using a hybrid ACO and a Neighbourhood Component Analysis (NCA). The best-selected features were eventually passed to many classifiers for final recognition. The experimental process involved an augmented dataset and achieved an average accuracy of 99.7%. Comparison with existing techniques showed that the proposed method was effective. |
URI: | https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85114791286&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/76333 |
ISSN: | 15462226 15462218 |
Appears in Collections: | CMUL: Journal Articles |
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