Algorithms for Automatic Identification and Analysis of Sri Lankan Anopheles Mosquito Species

Palanisamy Vigneshwaran, Vaikunthavasan Thiruchenthooran, S. Surendran, N. Ratnarajah
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引用次数: 1

Abstract

Microscopic digital image processing algorithms are presented here to automatically detect primary morphological features of Sri Lankan anopheline mosquitoes, as an essential step towards the development of automated identification and analysis of various species of anopheline mosquitoes. Mosquitoes that belong to genus Anopheles spread the causative pathogen of malaria. Perfect and speedy species identification is crucial in any surveillance and control strategies. Currently, morphological taxonomic keys are used to identify various species. Two or more primary morphological characteristics, such as a number of dark spots of wings and pale bands of legs, are used in each step of the hierarchical key. To achieve the automatic detection of the primary morphological features, image processing algorithms performed at three levels. At the pre-processing level, methods work with raw, possibly noisy pixel values, with noise reduction and smoothing. In the mid-level, algorithms are utilized pre-processing results for further means with background removing and spots/bands segmentation. At the final level, techniques try to extract the semantics of spots/bands and counting the spots/bands from the information provided. Thirty samples of anopheline mosquitoes' wings and legs microscopic images were analysed with satisfactory results.
斯里兰卡按蚊种自动识别与分析算法
本文提出了一种微型数字图像处理算法,用于自动检测斯里兰卡按蚊的主要形态特征,这是发展各种按蚊自动识别和分析的重要一步。属于按蚊属的蚊子传播疟疾的致病病原体。在任何监测和控制策略中,完美和快速的物种识别都是至关重要的。目前,形态学分类键被用来识别各种物种。两个或两个以上的主要形态特征,如翅膀上的一些黑点和腿上的苍白带,在等级键的每一步中都被使用。为了实现初级形态学特征的自动检测,图像处理算法分三个层次进行。在预处理阶段,方法处理原始的、可能有噪声的像素值,并进行降噪和平滑处理。在中级,算法利用预处理结果进行进一步的手段,包括背景去除和斑点/波段分割。在最后一层,技术试图提取点/带的语义,并从提供的信息中计算点/带。对30份按蚊翅膀和腿的显微图像进行了分析,结果令人满意。
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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