Image Processing for Traceability: A System Prototype for the Southern Rock Lobster (SRL) Supply Chain

Son Anh Vo, J. Scanlan, L. Mirowski, P. Turner
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引用次数: 3

Abstract

This paper describes how conventional image processing techniques can be applied to the grading of Southern Rock Lobsters (SRL) to produce a high quality data layer which could be an input into product traceability. The research is part of a broader investigation into designing a low-cost biometric identification solution for use along the entire lobster supply chain. In approaching the image processing for lobster grading a key consideration is to develop a system capable of using low cost consumer grade cameras readily available in mobile phones. The results confirm that by combining a number of common techniques in computer vision it is possible to capture and process a set of valuable attributes from sampled lobster image including color, length, weight, legs and sex. By combining this image profile with other pre-existing data on catch location and landing port each lobster can be verifiably tracked along the supply chain journey to markets in China. The image processing research results achieved in the laboratory show high accuracy in measuring lobster carapace length that is vital for weight conversion calculations. The results also demonstrate the capability to obtain reliable values for average color, tail shape and number of legs on a lobster used in grading classifications. The findings are a major first step in the development of individual lobster biometric identification and will directly contribute to automating lobster grading in this valuable Australian fishery.
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可追溯性的图像处理:南方岩龙虾(SRL)供应链的系统原型
本文描述了传统的图像处理技术如何应用于南方岩龙虾(SRL)的分级,以产生高质量的数据层,这可以作为产品可追溯性的输入。这项研究是一项更广泛的研究的一部分,目的是设计一种低成本的生物识别解决方案,用于整个龙虾供应链。在接近龙虾分级的图像处理时,一个关键的考虑因素是开发一种能够使用移动电话中现成的低成本消费级相机的系统。结果证实,通过结合计算机视觉中的一些常用技术,可以从采样的龙虾图像中捕获和处理一组有价值的属性,包括颜色、长度、重量、腿和性别。通过将该图像配置文件与捕获地点和着陆港的其他现有数据相结合,可以沿着供应链到中国市场的旅程对每只龙虾进行可验证的跟踪。在实验室中取得的图像处理研究结果表明,测量龙虾甲壳长度具有很高的精度,这对体重转换计算至关重要。结果还证明了获得用于分级分类的龙虾的平均颜色、尾巴形状和腿数的可靠值的能力。这些发现是发展个体龙虾生物识别的重要的第一步,并将直接有助于在这个有价值的澳大利亚渔业中自动化龙虾分级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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