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Artificial Ants to Extract Leaf Outlines and Primary Venation Patterns

机译:人工蚂蚁提取叶片轮廓和主要通气模式

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This paper presents preliminary results on an investigation into using artificial swarms to extract and quantify features in digital images. An ant algorithm has been developed to automatically extract the outlines and primary venation patterns from digital images of living leaf specimens via an edge detection method. A qualitative and quantitative analysis of the results is carried out herein. The artificial swarms are shown to converge onto the edges within the leaf images and statistical accuracy, as measured against ground truth images, is shown to increase in accordance with the swarm convergence. Visual results are promising, however limitations due to background noise need to be addressed for the given application. The findings in this study present potential for increased robustness in using swarm based methods, by exploiting their stigmergic behaviour to reduce the need for parameter fine-tuning with respect to individual image characteristics.
机译:本文介绍了有关使用人工群体提取和量化数字图像特征的调查的初步结果。已经开发了一种蚂蚁算法,可以通过边缘检测方法从生活叶片标本的数字图像中自动提取轮廓和主要静脉纹。在此对结果进行定性和定量分析。示出了人工群体收敛到叶片图像内的边缘,并且相对于地面真实图像测量的统计精度被示出为随着群体收敛而增加。视觉结果很有希望,但是对于给定的应用,需要解决由于背景噪声引起的限制。这项研究的发现为利用基于群的方法提高了鲁棒性的潜力,方法是利用它们的耻辱行为来减少针对各个图像特征进行参数微调的需要。

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