Fruit Quality Assessment with Densely Connected Convolutional Neural
Network
- URL: http://arxiv.org/abs/2212.04255v1
- Date: Thu, 8 Dec 2022 13:11:47 GMT
- Title: Fruit Quality Assessment with Densely Connected Convolutional Neural
Network
- Authors: Md. Samin Morshed, Sabbir Ahmed, Tasnim Ahmed, Muhammad Usama Islam,
A. B. M. Ashikur Rahman
- Abstract summary: We have exploited the concept of Densely Connected Convolutional Neural Networks (DenseNets) for fruit quality assessment.
The proposed pipeline achieved a remarkable accuracy of 99.67%.
The robustness of the model was further tested for fruit classification and quality assessment tasks where the model produced a similar performance.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate recognition of food items along with quality assessment is of
paramount importance in the agricultural industry. Such automated systems can
speed up the wheel of the food processing sector and save tons of manual labor.
In this connection, the recent advancement of Deep learning-based architectures
has introduced a wide variety of solutions offering remarkable performance in
several classification tasks. In this work, we have exploited the concept of
Densely Connected Convolutional Neural Networks (DenseNets) for fruit quality
assessment. The feature propagation towards the deeper layers has enabled the
network to tackle the vanishing gradient problems and ensured the reuse of
features to learn meaningful insights. Evaluating on a dataset of 19,526 images
containing six fruits having three quality grades for each, the proposed
pipeline achieved a remarkable accuracy of 99.67%. The robustness of the model
was further tested for fruit classification and quality assessment tasks where
the model produced a similar performance, which makes it suitable for real-life
applications.
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