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CNN Based Technique for Systematic Classification of Field Photographs

机译:基于CNN的野外照片系统分类技术

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Computer vision is the science that aims to contribute a similar, if not better, capability to a machine or computer. It is also interested with the idea and technology for building artificial systems that secure information from images. The digital image processing, image analysis and computer vision have become a principle part of artificial intelligence and the interface between the human and the machine grounded theory and enforced technologies. Implementing machine learning such as deep neural networks on agricultural data as immense attention in recent times. Convolution Neural Networks (CNN) are most commonly used in pattern and image detection problems as they have a number of advantages compared to other techniques. This paper proposes CNN architecture to segregate different plant images from the sequences collected. Following the preprocessing steps that will be including the elimination of blurriness or introducing the illumination change; CNN architecture is employed to extract the traits of the images that are present in the dataset that is created. Image classification using CNN involves dataset creation, training CNN, validating, testing CNN, prediction and at last classification. Here we use Keras software with backend as Theano and Tensor flow and we are able to predict the overall classification report with the accuracy of 43.98% for one cast of field photographs.
机译:计算机视觉是旨在为机器或计算机提供类似(甚至更好)功能的科学。它还对构建从图像中保护信息的人造系统的想法和技术感兴趣。数字图像处理,图像分析和计算机视觉已成为人工智能的基本组成部分,成为人与机器之间的基础理论和强制技术之间的接口。近年来,在农业数据上实施诸如深度神经网络之类的机器学习备受关注。卷积神经网络(CNN)最常用于模式和图像检测问题,因为与其他技术相比,卷积神经网络具有许多优势。本文提出了CNN体系结构,以从收集的序列中分离出不同的植物图像。遵循将要消除模糊或引入照明变化的预处理步骤; CNN体系结构用于提取创建的数据集中存在的图像的特征。使用CNN的图像分类涉及数据集的创建,训练CNN,验证,测试CNN,预测以及最终分类。在这里,我们将Keras软件与Theano和Tensor流一起用作后端,并且我们能够预测一份现场照片的整体分类报告,其准确度为43.98%。

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