一种用于水果病害检测的增强图像分割方法

B. Mishra, P. Tripathy, Saroja Kumar Rout, Chinmaya Ranjan Pattanaik
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引用次数: 0

摘要

图像分割领域的进展帮助农民在有限的时间内使用名义投入获得更高的产量。水果疾病的初步鉴定仅限于肉眼,因为这些症状中的大多数只能通过显微镜视觉来识别。图像分割是区分感染部位和消毒部位的关键。本文将聚类作为图像分割的一种方法,通过将水果受影响的区域从非受影响的部分中分割出来,谨慎地发现水果受影响的部分。采用is - km、IS-FEKM、IS-MKM和is - feca四种聚类技术。使用SC、RMSE、MSE、MAE、NAE和PSNR等性能指标来评估分割质量。与其他方法相比,利用is - feca得到的结果更为合理。对于基于is - feca的图像分割方法,各性能参数的取值大致都具有较好的分割效果,这意味着可以将水果的病变部分与未受影响的部分进行适当的分离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Enhanced Image Segmentation Approach for Detection of Diseases in Fruit
The progress in the realm of image segmentation has helped farmers to use nominal inputs for higher production within limited time. Preliminary identification of diseases on fruits is limited to naked eyes since the majority of these symptoms can only be identified by microscopic visuals. Image segmentation plays a vital part in distinguishing their infected parts from the disinfected ones. In this paper, clustering is used as an approach in image segmentation to cautiously discover the affected parts of the fruits by segmenting the affected areas from the non-affected parts. Four clustering techniques—IS-KM, IS-FEKM, IS-MKM, and IS-FECA—were employed for this purpose. The quality of segmentation was evaluated using few performance measures like SC, RMSE, MSE, MAE, NAE, and PSNR. The result obtained using IS-FECA is more reasonable compared to the other methods. Roughly each value of performance parameters confers better results for IS-FECA-based image segmentation method, which means proper separation of diseased parts in fruits from their un-affected ones is attainable.
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