基于图像数据的手写体数字识别正交方案

Pankaj Saraswat, Suman Saini
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引用次数: 0

摘要

数字识别最近引起了人们的兴趣。尽管针对mnist数据集验证提出了几种以学习为中心的分类方法,但精度和处理时间仍有待提高。将疾病早期合并处理是相当普遍的。像群优化这样的群体方法认真地评估了这种不利因素。一种使用卷积神经网络模型的新方法旨在解决传统Soc (CNN)的局限性。Clo是通过使用运气和类似的学习优化粒子群(CNN-SOLPSO)修改人工神经网络来创建的。这种适应是为不断增长的人口提供的。与其他非常规方法相比,该增强剂显示出更高的功效,并期望从健康评估中获得最佳特征。使用转录数字的Holdout库来构建和评估所提出模型中包含的计算。这些严重变形的、不可预测的、人工生成的数字图片有助于补偿其Imagenet数据集数据库。这项工作的主要目标是通过专注于更高的精度和更好的计算,为适当的数字方法做出贡献。使用Bas 2018b,可以选择训练不可动摇质量和掉落能力的参数,验证精细化和损失测量,并通过缺陷率和完成时刻识别速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Orthogonal Schemes for Handwritten Digits Recognizing from Image Data
Identification of numbers has gained excitement recently. Despite the fact that several learning focused categorization approaches are proposed for mnist dataset validation, the precision and processing time may still be improved. Dealing with a disease as an early union is rather common. Swarm approaches like Swarm Optimization seriously evaluate this unfavorable element (PSO). A novel approach using neural network models with convolutions is intended to address the limitations of traditional Soc (CNN). Clo is created by modifying the artificial neural network with the use of luck and analogous learnt optimized particle swarms (CNN-SOLPSO). This adaption is provided for the steadily growing population of the over. This projected enhancer shows increased efficacy when compared to other unconventional methods and expects the best characteristics from that wellbeing assessment. The Holdout library of transcribed digits is used to construct and evaluate the computation contained in the proposed model. the severely deformed, unpredictable, and manually produced pictures of digits that help compensate its Imagenet dataset database. The major objective of this effort is to contribute to an appropriate approach to digital by focusing on greater precision and better computations. Using Bas 2018b, it is possible to choose parameters for Training unshakable quality and drop capacity, Validate refinement and loss measurements, and Identify velocities with defect rate and completion moment.
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