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Fruit sizing using AI: A review of methods and challenges

期刊

POSTHARVEST BIOLOGY AND TECHNOLOGY
卷 206, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.postharvbio.2023.112587

关键词

Artificial intelligence; Fruit detection; Fruit measure; Image processing; Deep learning; Fruit quality

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The size of fruits at harvest is crucial for high-quality table fruit production in orchards and vineyards. Recent advancements in deep learning convolutional neural networks have made automatic fruit detection more accurate and efficient. Various methods have also been developed for fruit sizing and maturity estimation.
Fruit size at harvest is an economically important variable for high-quality table fruit production in orchards and vineyards. In addition, knowing the number and size of the fruit on the tree is essential in the framework of precise production, harvest, and postharvest management. A prerequisite for analysis of fruit in a real-world environment is the detection and segmentation from background signal. In the last five years, deep learning convolutional neural network have become the standard method for automatic fruit detection, achieving F1 -scores higher than 90 %, as well as real-time processing speeds. At the same time, different methods have been developed for, mainly, fruit size and, more rarely, fruit maturity estimation from 2D images and 3D point clouds. These sizing methods are focused on a few species like grape, apple, citrus, and mango, resulting in mean absolute error values of less than 4 mm in apple fruit. This review provides an overview of the most recent methodologies developed for in-field fruit detection/counting and sizing as well as few upcoming examples of maturity estimation. Challenges, such as sensor fusion, highly varying lighting conditions, occlusions in the canopy, shortage of public fruit datasets, and opportunities for research transfer, are discussed.

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