Sensors, Vol. 23, Pages 738: Non-Destructive Banana Ripeness Detection Using Shallow and Deep Learning: A Systematic Review

Sensors, Vol. 23, Pages 738: Non-Destructive Banana Ripeness Detection Using Shallow and Deep Learning: A Systematic Review Sensors doi: 10.3390/s23020738 Authors: Preety Baglat Ahatsham Hayat Fábio Mendonça Ankit Gupta Sheikh Shanawaz Mostafa Fernando Morgado-Dias The ripeness of bananas is the most significant factor affecting nutrient composition and demand. Conventionally, cutting and ripeness analysis requires expert knowledge and substantial human intervention, and different studies have been conducted to automate and substantially reduce human effort. Using the Preferred Reporting Items for the Systematic Reviews approach, 1548 studies were extracted from journals and conferences, using different research databases, and 35 were included in the final review for key parameters. These studies suggest the dominance of banana fingers as input data, a sensor camera as the preferred capturing device, and appropriate features, such as color, that can provide better detection. Among six stages of ripeness, the studies employing the four mentioned stages performed better in terms of accuracy and coefficient of determination value. Among all the works for detecting ripeness stages prediction, convolutional neural networks were found to perform sufficiently well with large datasets, whereas conventional artificial neural networks and support vector machines attained better performance for sensor-related data. However, insufficient information on the dataset and...
Source: Sensors - Category: Biotechnology Authors: Tags: Systematic Review Source Type: research