基于本体和量子粒子群算法的植物病害图像分割

E. Elsayed, Mohammed Aly
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引用次数: 5

摘要

粮食安全的主要风险之一是植物病害,但是由于缺乏必要的基础设施和实际的噪音,科学家们面临着一个难题。图像的语义分割将图像划分为不重叠的区域,并分配指定的语义标签。本文采用量子粒子群优化算法对原始噪声图像进行分割,并利用本体对分割后的图像进行分类。输入噪声图像分割被限制在一个分类阶段,在这个阶段对象被转移到本体。利用49,563张健康和患病植物叶片图像,鉴定出12种植物和22种病害,并对该方法进行了评价。该方法在停止测试集上的准确率为86.22%,表明该策略是合适的。EPDO (enhanced Plant Disease Ontology)是用web本体语言(OWL)构建的。分割后的噪声图像元素与EPDO进行配对,EPDO的特征来源于QPSO。我们的研究结果表明,基于该方法的分类优于目前最先进的算法。该方法在噪声级σ=70处去除输入图像中的噪声,节省了时间和精力
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Hybrid Between Ontology and Quantum Particle Swarm Optimization for Segmenting Noisy Plant Disease Image
One of the main risks to food security is plant diseases, but because of the absence of needed infrastructure and actual noise, scientists are faced with a difficult issue. Semantic segmentation of images divides images into non-overlapped regions, with specified semantic labels allocated. In this paper, The QPSO (quantum particle swarm optimization) algorithm has been used in segmentation of an original noisy image and Ontology has been used in classification the segmented image. Input noisy image segmentation is limited to a classification phase in which the object is transferred to Ontology. With 49,563 images from healthy and diseased plant leaves, 12 plant species were identified and 22 diseases, the proposed method is evaluated. The method proposed produces an accuracy of 86.22 percent for a stopped test set, showing that the strategy is appropriate. EPDO (Enhance Plant Disease Ontology) is built with the web ontology language (OWL). The segmented noisy image elements are paired with EPDO with derived features that come from QPSO. Our results show that a classification based on the suggested method is better than the state-of-the-art algorithms. The proposed method also saves time and effort for removing the noise at noise level from the input image σ=70
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