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Object Recognition using Sparse Autoencoder with Convolutional Neural Network

机译:卷积神经网络的稀疏自动编码器的目标识别

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Object recognition has turned into one of the demanding areas of exploration in the arena of image processing because of its uses in different applications such as Security, Robot navigation, Information retrieval, satellite imaging and various biometric applications. Several methods have been proposed which includes support vector machine, shape matching techniques, histogram techniques and various neural network techniques for feature classification and feature selection but have not been found to use autoencoder with CNN for object recognition. This paper enlightened the usage of unsupervised learning for pretraining purpose with the help of sparse autoencoder and use ConvNet with the aim to detect an object of each category, i.e., airplane, horse, automobile, bird, frog, cat, dog, ship, deer and truck etc. Autoencoder has two phase encoder and decoder. Encoder is used to encode the input image for extracting important features and decoder is used to restructure the input image. This paper shows the improved accuracy of CIFAR-10, CIFAR-100 and STL-10 dataset by using the proposed approach and also performing a number of cross-validation experiments on these object datasets.
机译:由于对象识别在不同应用程序中的应用,例如安全性,机器人导航,信息检索,卫星成像和各种生物识别应用程序,因此已成为图像处理领域探索的要求之一。已经提出了几种方法,包括支持向量机,形状匹配技术,直方图技术以及用于特征分类和特征选择的各种神经网络技术,但是尚未发现将带有CNN的自动编码器用于目标识别。本文通过稀疏自动编码器和使用ConvNet启发了无监督学习在预训练中的用途,目的是检测飞机,马,汽车,鸟,青蛙,猫,狗,船,鹿的各个类别的对象。自动编码器具有两相编码器和解码器。编码器用于对输入图像进行编码以提取重要特征,而解码器用于重构输入图像。本文通过使用提出的方法并在这些对象数据集上进行了许多交叉验证实验,显示了CIFAR-10,CIFAR-100和STL-10数据集的准确性提高。

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