Image Segmentation of Cattle Muzzle Using Region Merging Statistical Technic

ComTech Pub Date : 2015-12-01 DOI:10.21512/COMTECH.V6I4.2189
Jullend Gatc
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引用次数: 0

Abstract

Making an identification system that able to assist in obtaining, recording and organizing information is the first step in developing any kind of recording system. Nowadays, many recording systems were developed with artificial markers although it has been proved that it has many limitations. Biometrics use of animals provides a solution to these restrictions. On a cattle, biometric features contained in the cattle muzzle that can be used as a pattern recognition sample. Pattern recognition methods can be used for the development of cattle identification system utilizing biometric found on the cattle muzzle using digital image processing techniques. In this study, we proposed cattle muzzle identification method using segmentation Statistical Region Merging (SRM). This method aims to identify specific patterns found on the cattle muzzle by separating the object pattern (foreground) from unnecessary information (background) This method is able to identified individual cattle based on the pattern of it muzzle. Based on our evaluation, this method can provide good performance results. This method good performance can be seen from the precision and recall : 87% and the value of ROC : 0.976. Hopefully this research can be used to help identify cattle accurately on the recording process.
基于区域融合统计技术的牛口部图像分割
研制一种能够协助获取、记录和组织信息的识别系统是开发任何一种记录系统的第一步。目前,许多录音系统都是用人工标记开发的,尽管事实证明它有许多局限性。动物的生物识别技术为这些限制提供了解决方案。在一头牛身上,包含在牛口部的生物特征可以作为模式识别样本。模式识别方法可用于利用数字图像处理技术在牛口鼻上发现的生物特征来开发牛识别系统。本文提出了一种基于分割统计区域合并(SRM)的牛口鼻识别方法。该方法的目的是通过将目标图案(前景)与不必要的信息(背景)分离,识别出牛口鼻上的特定图案,该方法能够根据牛口鼻的图案识别出牛的个体。根据我们的评估,该方法可以提供良好的性能结果。该方法的精密度和召回率为87%,ROC值为0.976,表现出良好的性能。希望这项研究可以用来帮助在记录过程中准确地识别牛。
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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6
审稿时长
16 weeks
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