Convolutional Neural Network Demystified for a Comprehensive Learning with Industrial Application

Anandharaju Durai Raju, S. Thirunavukkarasu
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引用次数: 2

Abstract

In the recent past of time, numerous investigators have driven on and subsidized novelties to image classification methods. In this chapter, an introduction to image classification scheme and their types is offered. Image classification discovers its application in a variety of fields, to name a few, judgment of diseases, finding and identification of faults, classification of nutrition goods based on superiority, valuation of usual capitals and conservation pollution, education of land use and land cover from remote sensing satellite images, character identification and detection in optical character reader, face recognition, object detection, and so on. Automatic image classification schemes found on actual algorithms deliver high accuracy and exactness in recognizing object/features. Convolution neural network is a superior genre of neural network that requires minimal preprocessing. The ability of the convolutional neural network (CNN) to understand the visual content of the input image makes its suitable for recognizing minute variation between the classes. This power of the CNN makes it a good choice to address image classification problems with multi-classes. So, in this chapter, the entire flow of CNN’s architecture with different industrial applications will be discussed.
为工业应用的全面学习揭秘卷积神经网络
在过去的一段时间里,许多研究者已经推动和资助了新的图像分类方法。在本章中,介绍了图像分类方案及其类型。图像分类在许多领域都有应用,例如疾病的判断、故障的发现和识别、基于优势的营养品分类、通常资本和保护污染的评估、从遥感卫星图像中进行土地利用和土地覆盖的教育、光学字符阅读器中的字符识别和检测、人脸识别、目标检测等等。在实际算法上发现的自动图像分类方案在识别目标/特征方面具有较高的准确性和准确性。卷积神经网络是神经网络的一种优越类型,它需要最少的预处理。卷积神经网络(CNN)理解输入图像视觉内容的能力使其适合于识别类别之间的微小变化。CNN的这种能力使其成为解决多类图像分类问题的一个很好的选择。因此,在本章中,将讨论CNN架构与不同工业应用的整个流程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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