Abstract

As a cost-effective and nondestructive detection method, the machine vision technology has been widely applied in the detection of potato defects. Recently, the depth camera which supports range sensing has been used for potato surface defect detection, such as bumps and hollows. In this study, we developed a potato automatic grading system that uses a depth imaging system as a data collector and applies a machine learning system for potato quality grading. The depth imaging system collects 3D potato surface thickness distribution data and stores depth images for the training and validation of the machine learning system. The machine learning system, which is composed of a softmax regression model and a convolutional neural network model, can grade a potato tube into six different quality levels based on tube appearance and size. The experimental results indicate that the softmax regression model has a high accuracy in sample size detection, with a 94.4% success rate, but a low success rate in appearance classification (only 14.5% for the lowest group). The convolutional neural network model, however, achieved a high success rate not only in size classification, at 94.5%, but also in appearance classification, at 91.6%, and the overall quality grading accuracy was 86.6%. The quality grading based on the depth imaging technology shows its potential and advantages in nondestructive postharvesting research, especially for 3D surface shape-related fields.

Highlights

  • Potatoes, with over 18.9 million hectares planted globally every year, are one of the most important crops in the world [1]

  • Since potato quality classification based on the depth imaging technology and machine learning has merely been reported, the overall objective of this study is to develop a system that automatically grades potato tubers of diverse size and appearance based on machine vision, depth image processing, and machine learning technology. is grading system captures sample depth images by a depth camera system, develops a potato depth image processing algorithm, builds the machine learning models, and evaluates the potato quality level automatically

  • We propose a new potato quality grading system based on a machine vision system and machine learning models

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Summary

Introduction

With over 18.9 million hectares planted globally every year, are one of the most important crops in the world [1]. After harvest, grading based on quality is important in classifying products into different levels, improving packing and other postharvest operations, and allowing the farmer to obtain higher prices. Potatoes are separated into different homogeneous groups according to tube-specific characteristics such as shape, mass, color, and deformities. Potatoes are a difficult crop to grade in the postharvest process because of their wide diversity in shape, deformity, and mass, and the grading process still relies on experienced workers nearby the conveyor system [2]. Inconsistent sorting and grading errors often occur during the manual grading process because workers are influenced by the surrounding environment [4, 5]

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