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Plants Leaf Segmentation using Bacterial Foraging Optimization algorithm

机译:基于细菌觅食优化算法的植物叶片分割

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Computer vision methodologies has been predominantly used for solving number of problems related with pattern recognition, machine vision, object detection, object classification and many more. This terminology along with soft computing approaches have proven to be a solution for various complex problems. But, in recent time it has been noticed that when conventional methods incorporated with optimization methods, the result achieves higher accuracy and also lessens the computational time. These Nature inspired algorithm (NIA) or Bio-inspired methods have been espoused in the number of applications for finding an accurate solution working with real-time or complex data. Image segmentation is one of them. It is the practice of separating an image into its constituent subparts in order to extract some meaningful information from it. There are number of methods used for performing segmentation. In this paper our aim is in studying one of the optimization method named as Bacterial Foraging Optimization Algorithm (BFOA). This method is then used for initializing the weights for Artificial Neural Network (ANN) that is deployed for image segmentation. Finally, when the results are compared with the other methods shows the efficiency BFO-ANN method.
机译:计算机视觉方法主要用于解决与模式识别,机器视觉,对象检测,对象分类相关的问题数量和更多。该术语以及软计算方法已被证明是对各种复杂问题的解决方案。但是,在近来,它已经注意到,当传统方法加入优化方法时,结果达到更高的准确性,并且还减少了计算时间。这些自然启发算法(NIA)或生物启发方法已经在寻找准确解决的应用程序的应用程序数量中使用了实时或复杂数据。图像分割是其中之一。它是将图像分成其成分子部分的实践,以便从中提取一些有意义的信息。有用于执行分割的方法数量。本文我们的目标是研究一个名为细菌觅食优化算法(BFOA)的优化方法之一。然后,该方法用于初始化部署用于图像分割的人工神经网络(ANN)的权重。最后,当结果与其他方法进行比较时,显示效率BFO-ANN方法。

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