Abstract

Currently, the detection of blueberry internal bruising focuses mostly on single hyperspectral imaging (HSI) systems. Attempts to fuse different HSI systems with complementary spectral ranges are still lacking. A push broom based HSI system and a liquid crystal tunable filter (LCTF) based HSI system with different sensing ranges and detectors were investigated to jointly detect blueberry internal bruising in the lab. The mean reflectance spectrum of each berry sample was extracted from the data obtained by two HSI systems respectively. The spectral data from the two spectroscopic techniques were analyzed separately using feature selection method, partial least squares-discriminant analysis (PLS-DA), and support vector machine (SVM), and then fused with three data fusion strategies at the data level, feature level, and decision level. The three data fusion strategies achieved better classification results than using each HSI system alone. The decision level fusion integrating classification results from the two instruments with selected relevant features achieved more promising results, suggesting that the two HSI systems with complementary spectral ranges, combined with feature selection and data fusion strategies, could be used synergistically to improve blueberry internal bruising detection. This study was the first step in demonstrating the feasibility of the fusion of two HSI systems with complementary spectral ranges for detecting blueberry bruising, which could lead to a multispectral imaging system with a few selected wavelengths and an appropriate detector for bruising detection on the packing line.

Highlights

  • The blueberry is an important horticultural crop in the United States of America

  • The effective features should be determined from the hyperspectral imaging (HSI) systems before developing a multispectral imaging system to detect blueberry bruising on the packing line

  • As this study demonstrated the feasibility of the fusion of the two HSI systems with complementary spectral ranges for blueberry bruising detection, it is feasible to develop two multispectral systems with the selected wavelengths, and integrate the results from the two systems by using the proposed decision level fusion on a packing line for blueberry bruising detection

Read more

Summary

Introduction

The blueberry is an important horticultural crop in the United States of America. Its production was 262,539 tons in 2014, accounting for about 50% of the world production [1]. Blueberries are prone to impact and mechanical damage during transportation when the fruit collides with hard surfaces. In order to remain competitive, careful postharvest handling is required and bruised fruit should be sorted out before they are sold in the fresh market. Because the skin of the blueberry is dark and opaque to most visible light, internal bruises under skin are not visible to the human eyes. It is challenging for traditional RGB images to detect blueberry bruises nondestructively [3].

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call