An Enhanced Image Segmentation Approach for Detection of Diseases in Fruit

An Enhanced Image Segmentation Approach for Detection of Diseases in Fruit

Bikram Keshari Mishra, Pradyumna Kumar Tripathy, Saroja Kumar Rout, Chinmaya Ranjan Pattanaik
Copyright: © 2022 |Pages: 21
DOI: 10.4018/IJISMD.315281
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Abstract

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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1. Introduction

Now-a-days the present agricultural science and technology is intensely advanced. The worth of fruits and vegetables depends on their quality. It is an imperative concern how to evaluate the quality of fruits in agricultural / horticultural realm (Saxena, 2014), and (Balakrishna, et al., 2019). The orthodox method of fruits quality judgment is made by the experts in those domains that is quite effective, but is very time-consuming. It becomes incredibly imperative to examine the fruit diseases very precisely within limited time. Study reveals that, approximately 50% of fruits like apples, oranges, lemons, grapes, bananas etc. are destroyed every year due to plant diseases which cannot be detected professionally at the early stage. Few diseases can be identified by human experts, but it is always not likely to get them on time at remote areas. Some fruit diseases are so complicated that they require powerful microscopes for their identification. Hence, the expansion of computer visualization system for identifying and categorizing disease in fruits will immensely evade human intervention and will lead to impartial decision making about disease detection in fruits and this will also help in quick and absolute recovery of the disease. With the advent of image segmentation (Masood, 2016), and (Singh, et al., 2020) we are effortlessly able to identify the defected portion of the fruit.

Digital images are now regarded as a key factor of conveying information in this real world. Mining the information from images and studying them minutely in order to make the extorted information valuable for several applications is a vital quality of digital image processing. Image segmentation (Gonzales, et al., 2008) plays a key role in extorting the required features from the images. The data pixels with familiar visual characteristics are grouped into the same region and are separated from those having different characteristics. At present, image processing forms the mainstay in the research area in almost all the disciplines. For instance, after minutely analyzing the segmented images the cancerous tissue (Altarawneh, 2012) and (Kahaki, S. M. M, et al. 2017) can be effortlessly distinguished from the non-cancerous ones. From the results obtained from segmentation, it is effortlessly feasible to discover the essential area of significance.

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