Image Processing Techniques based Feature Extraction for Insect Damage Areas

Ece Alkan, A. Aydın
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Abstract

Monitoring of forests is important for the diagnosis of insect damage to vegetation. Detection and monitoring of damaged areas facilitates the control of pests for practitioners. For this purpose, Unmanned Aerial Vehicles (UAVs) have been recently used to detect damaged areas. In order to distinguish damage areas from healthy areas on UAV images, it is necessary to extract the feature parameters of the images. Therefore, feature extraction is an important step in Computer Aided Diagnosis of insect damage monitored with UAV images. By reducing the size of the UAV image data, it is possible to distinguish between damaged and healthy areas from the extracted features. The accuracy of the classification algorithm depends on the segmentation method and the extracted features. The Grey-Level Co-occurrence Matrix (GLCM) characterizes areas texture based on the number of pixel pairs with specific intensity values arranged in specific spatial relationships. In this paper, texture characteristics of insect damage areas were extracted from UAV images using with GLCM. The 3000*4000 resolution UAV images containing damaged and healthy larch trees were analyzed using Definiens Developer (e-Cognition software) for multiresolution segmentation to detect the damaged areas. In this analysis, scale parameters were applied as 500, shape 0.1, color 0.9 and compactness 0.5. As a result of segmentation, GLCM homogeneity, GLCM contrast and GLCM entropy texture parameters were calculated for each segment. When calculating the texturing parameters, neighborhoods in different angular directions (0,45,90,135) are taken into account. As a result of the calculations made by considering all directions, it was found that GLCM homogeneity values ranged between 0.08 - 0.2, GLCM contrast values ranged between 82.86 - 303.58 and GLCM entropy values ranged between 7.81 - 8.51. On the other hand, GLCM homogeneity for healthy areas varies between 0.05 - 0.08, GLCM contrast between 441.70 - 888.80 and GLCM entropy between 8.93 - 9.40. The study demonstrated that GLCM technique can be a reliable method to detection of insect damage areas from UAV imagery.
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基于图像处理技术的虫灾区特征提取
森林监测对于诊断昆虫对植被的破坏非常重要。对受损区域的检测和监测有助于从业者控制害虫。为此,无人机(UAV)最近被用于探测受损区域。为了区分无人机图像上的损伤区域和健康区域,有必要提取图像的特征参数。因此,特征提取是无人机图像监测昆虫损伤计算机辅助诊断的重要步骤。通过减小无人机图像数据的大小,可以从提取的特征中区分受损区域和健康区域。分类算法的准确性取决于分割方法和提取的特征。灰度共生矩阵(GLCM)基于具有以特定空间关系排列的特定强度值的像素对的数量来表征区域纹理。本文利用GLCM从无人机图像中提取了虫灾区的纹理特征。使用Definens Developer(e-Cognition软件)对包含受损和健康落叶松的3000*4000分辨率无人机图像进行多分辨率分割,以检测受损区域。在该分析中,尺度参数被应用为500,形状0.1,颜色0.9和压实度0.5。作为分割的结果,计算了每个片段的GLCM均匀性、GLCM对比度和GLCM熵纹理参数。在计算纹理参数时,会考虑不同角度方向(0,45,90135)上的邻域。通过考虑所有方向进行的计算结果发现,GLCM均匀性值在0.08-0.2之间,GLCM对比度值在82.86-303.58之间,并且GLCM熵值在7.81-8.51之间。另一方面,健康区域的GLCM同质性在0.05-0.08之间变化,GLCM对比度在441.70-888.80之间变化,并且GLCM熵在8.93-9.40之间变化。研究表明,GLCM技术是一种从无人机图像中检测昆虫损伤区域的可靠方法。
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来源期刊
European Journal of Forest Engineering
European Journal of Forest Engineering Agricultural and Biological Sciences-Forestry
CiteScore
1.30
自引率
0.00%
发文量
6
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