Litcius/Paper detail

Apple ripeness identification from digital images using transformers

Bingjie Xiao, Minh Nguyen, Wei Qi Yan

2023Multimedia Tools and Applications31 citationsDOIOpen Access PDF

Abstract

Abstract We describe a non-destructive test of apple ripeness using digital images of multiple types of apples. In this paper, fruit images are treated as data samples, artificial intelligence models are employed to implement the classification of fruits and the identification of maturity levels. In order to obtain the ripeness classifications of fruits, we make use of deep learning models to conduct our experiments; we evaluate the test results of our proposed models. In order to ensure the accuracy of our experimental results, we created our own dataset, and obtained the best accuracy of fruit classification by comparing Transformer model and YOLO model in deep learning, thereby attaining the best accuracy of fruit maturity recognition. At the same time, we also combined YOLO model with attention module and gave the fast object detection by using the improved YOLO model.

Topics & Concepts

RipenessComputer scienceArtificial intelligenceTransformerIdentification (biology)Deep learningComputer visionPattern recognition (psychology)Machine learningHorticultureVoltagePhysicsBiologyRipeningQuantum mechanicsBotanySmart Agriculture and AISpectroscopy and Chemometric AnalysesHorticultural and Viticultural Research