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Performance analysis of artificial neural network and K Nearest neighbors image classification techniques with wavelet features

机译:具有小波特征的人工神经网络和K最近邻图像分类技术的性能分析

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摘要

In present day classification of multi class image play an important role in engineering and computer vision application like image processing in biomedicai, retrieval of content based image. From some past years researchers and scientists have made a lot of efforts in implementation of an advanced image classification approaches [5, 6, 7, 8, 9, and 10]. The classification of images is a challenging and important task nowadays. In this propose method our objective is to successfully classify an image from given large image data base. Image features which contained most important information for successful classification is extract by using Haar wavelet and Daubechies wavelet (db4) wavelet discrete Mayer wavelet (demy). In this proposed method received image features are first used with ANN for training and testing and then used same image features of different wavelet transform for KNN training testing. Finally we evaluate the performance of both ANN and KNN classifier with different wavelet Features. Highest classification efficiency is received with Dmey based ANN classifier. Proposed work shows an new application and its directly contributes towards image classification. The complete work is experimented in Mat lab 201 1b using real world dataset.
机译:当今,多类别图像的分类在工程和计算机视觉应用中起着重要作用,例如生物医学中的图像处理,基于内容的图像检索。在过去的几年中,研究人员和科学家在实现高级图像分类方法[5、6、7、8、9和10]方面付出了很多努力。如今,图像分类是一项艰巨而重要的任务。在这种提议的方法中,我们的目标是从给定的大型图像数据库中成功对图像进行分类。通过使用Haar小波和Daubechies小波(db4)小波离散Mayer小波(demy)来提取包含成功分类最重要信息的图像特征。在该方法中,首先将接收到的图像特征与ANN一起用于训练和测试,然后将不同小波变换的相同图像特征用于KNN训练测试。最后,我们评估了具有不同小波特征的ANN和KNN分类器的性能。使用基于Dmey的ANN分类器可获得最高的分类效率。拟议的工作显示了一个新的应用程序,它直接有助于图像分类。整个工作在Mat lab 201 1b中使用现实世界数据集进行了实验。

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