基于卷积神经网络的手写预测的深度q特征选择与识别

A. Sasi Kumar, P. Aithal
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引用次数: 0

摘要

目的:深度学习(DL)被称为模式识别和机器学习中的“热门学科”。深度学习无与伦比的潜力可以解决大多数复杂的机器学习问题,很明显,它将在移动设备的框架内受到关注。有一些模式识别工具可以被下一代的智能应用程序用来做出巨大的改变。设计/方法/方法:深度特征卷积网络(deep feature convolutional network, DEEPQ-CNN)在启用数据驱动学习的情况下,从相关训练数据中提取层次图像的高代表性和特征。此外,DEEPQ-CNN的表征策略在边界和构造上适用于几个数据集。神经网络的运行时间和网络的权重是移动计算的基本要求。发现/结果:在本系统中,图像处理模块的设计是基于移动设备卷积神经网络的特点。然而,移动设备对数据收集、处理和构建的使用进行了描述。最后但并非最不重要的是,考虑了计算条件和移动设备数据特征。原始值:对于光学字符识别(OCR),特定的数据集支持轻量级的网络结构。当对过去感知光学人的方法的结果进行检查时,使用CNN来批准所提出的框架。论文类型:Research
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DeepQ Feature Selection and Recognition of Handwritten Prediction Using Convolutional Neural Networks
Purpose: Deep learning (DL) is referred to as the "hot subject" in pattern recognition and machine learning. The unmatched potential of deep learning allows for the resolution of the majority of complex machine learning issues, and it is evident that it will receive attention within the framework for mobile devices. There are tools for pattern recognition that can be used by smart applications of the next generation to make huge changes. Design/Methodology/Approach: The deep feature convolutional network (DEEPQ-CNN) extracts the high representation and features of the hierarchical image from the relevant training data when data-driven learning is enabled. In addition, the DEEPQ-CNN characterization strategies are adapted to a couple of datasets in the boundaries and construction. The running time of the neural network and the network's weight are essential requirements for mobile computing. Finding/Results: In the proposed system, the design of the image processing module is based on the characteristics of a mobile device's convolutional neural network. However, the use of mobile devices for data collection, processing, and construction is described. Last but not least, the computing conditions and mobile device data features are taken into account. Original Value: For optical character recognition (OCR), specific datasets support the lightweight network structure. CNN is utilized to approve the proposed framework when examinations are made with the results of past methods to perceive the optical person. Paper Type: Research
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