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An Improved Convolutional Neural Network for Classification of Small Patches of Granite Tiles

机译:改进的卷积神经网络用于花岗岩砖小块的分类

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In some of the industries, textural classification is one of the most important and challenging problem. Among all, the stone industries has to deal with such issues more often. Many a times the buyer receives different rocks due to the fact that the visual appearance of some of the rocks is so similar that it creates confusion. This paper proposes a resolution invariant Convolutional Neural Network (CNN) architecture by improving different aspects of the network, including designing of layer, loss functions, activation function, regularization and optimization to extract the intrinsic features from the small granite image patches. These extracted features will help in patches classification and will make the proposed network capable of proving itselfin uncontrolled environmental conditions and will also resolveanykind of misunderstanding. The network is trained from the scratch and has outperformed the existing first data driven technique with a well-known data set.
机译:在某些行业中,纹理分类是最重要且最具挑战性的问题之一。其中,石材行业必须更频繁地处理此类问题。由于有些岩石的视觉外观如此相似,以至于造成混乱,因此买家常常会收到不同的岩石。本文通过改进网络的各个方面,包括层的设计,损失函数,激活函数,正则化和优化,以从小花岗岩图像块中提取固有特征,提出了分辨率不变的卷积神经网络(CNN)体系结构。这些提取的功能将有助于补丁分类,并使拟议的网络能够在不受控制的环境条件下证明自己,并且还将解决任何误解。该网络从头开始进行培训,并以众所周知的数据集超越了现有的第一个数据驱动技术。

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