Classifying cotton bark and grass extraneous matter using image analysis

Author:

Whitelock Derek P1,Ed Hughs S1,Armijo Carlos B1

Affiliation:

1. Southwestern Cotton Ginning Research Laboratory, USDA Agricultural Research Service, USA

Abstract

Cotton extraneous matter (EM) and special conditions are the only cotton quality attributes still determined manually by US Department of Agriculture Agricultural Marketing Service (USDA-AMS) classers. To develop a machine EM classing system, a better understanding of what triggers a classer EM call is needed. The goal of this work was to develop new information about cotton EM, such as bark and grass, and leaf particles, using machine measurements, to aid in the development of instrumentation for cotton quality measurements. AMS classers were tasked in identifying and denoting bark/grass in large-area color images of cotton samples. Image segmentation analysis was applied to detect non-cotton items, such as leaf particles, and the classer denoted bark/grass objects were segmented manually. Further image analysis was used to measure shape and color parameters of these bark/grass objects and leaf particles in the sample images. These measurements of the bark/grass objects and leaf particles were compared and logistical regression analyses conducted to evaluate classification. For every shape and color parameter, there were significant differences between the bark/grass objects and the detected leaf particles in the images. The differences were greater for the shape parameters than for the color parameters. A classification model with shape, color, and log-transformed shape parameters consistently classified the bark/grass objects and leaf particles most accurately with 99.5% and 97.6% correct classification rate, respectively. However, classification models that were 99% correct classifying manually segmented bark/grass were only about 77% correct when applied to the machine detected bark/grass particles.

Publisher

SAGE Publications

Subject

Polymers and Plastics,Chemical Engineering (miscellaneous)

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Synthesis of Cotton Fiber and Its Structure;Natural and Synthetic Fiber Reinforced Composites;2021-12-10

2. The relationship between instrumental leaf grade and Shirley Analyzer trash content in cotton lint;Textile Research Journal;2017-03-10

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