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A Support Vector Machine with Gabor Features for Animal Intrusion Detection in Agriculture Fields

机译:具有Gabor特征的支持向量机,用于农业领域的动物入侵检测

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Animal intrusion in agricultural fields has been a pestering problem for farmers, especially during monsoon when they try to maximize their yield. This paper puts forth an image processing and machine learning based approach to classify the animal as threat and hence alert the farmer. The image is segmented into parts using Watershed algorithm. The features are extracted from the training set by using 2D Gabor filter bank. Classification is done using Support Vector Machines algorithm. Percentage accuracy for each test image is analyzed. Training set has been increased in a step wise manner in order to find the minimum possible combination of test images and filter bank and hence increase the efficiency of the model compared to the existing models.
机译:农业田地的动物侵入是农民的兴起问题,特别是在季风期间,当他们试图最大化它们的产量时。本文提出了一种基于图像处理和机器学习的方法,将动物分类为威胁,从而提醒农民。使用流域算法将图像分段为零件。通过使用2D Gabor滤波器组从训练集中提取该特征。使用支持向量机算法进行分类。分析每个测试图像的百分比精度。培训集以一步明的方式增加了,以找到测试图像和滤波器组的最小可能组合,因此与现有模型相比提高模型的效率。

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