Fusion of acoustic sensing and deep learning techniques for apple mealiness detection
Autor: | Hamed R. Tavakoli, Abdullah Imanmehr, Majid Lashgari |
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Rok vydání: | 2020 |
Předmět: |
Microphone
business.industry Computer science Deep learning 010401 analytical chemistry Pattern recognition 04 agricultural and veterinary sciences 01 natural sciences Convolutional neural network 040501 horticulture 0104 chemical sciences Original Article Artificial intelligence 0405 other agricultural sciences business Food Science Confined compression |
Zdroj: | J Food Sci Technol |
ISSN: | 0975-8402 0022-1155 |
DOI: | 10.1007/s13197-020-04259-y |
Popis: | Mealiness in apple fruit can occur during storage or because of harvesting in an inappropriate time; it degrades the quality of the fruit and has a considerable role in the fruit industry. In this paper, a novel non-destructive approach for detection of mealiness in Red Delicious apple using acoustic and deep learning techniques was proposed. A confined compression test was performed to assign labels of mealy and non-mealy to the apple samples. The criteria for the assignment were hardness and juiciness of the samples. For the acoustic measurements, a plastic ball pendulum was used as the impact device, and a microphone was installed near the sample to record the impact response. The recorded acoustic signals were converted to images. Two famous pre-trained convolutional neural networks, AlexNet and VGGNet were fine-tuned and employed as classifiers. According to the result obtained, the accuracy of AlexNet and VGGNet for classifying the apples to the two categories of mealy and non-mealy apples was 91.11% and 86.94%, respectively. In addition, the training and classification speed of AlexNet was higher. The results indicated that the suggested method provides an effective and promising tool for assessment of mealiness in apple fruit non-destructively and inexpensively. |
Databáze: | OpenAIRE |
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