首页 | 官方网站   微博 | 高级检索  
     

基于LRC-SNN的图像高效重建与识别
引用本文:索静,宋林林,李强.基于LRC-SNN的图像高效重建与识别[J].计算机工程,2020,46(7):243-250,259.
作者姓名:索静  宋林林  李强
作者单位:太原工业学院电子工程系,太原030000;太原理工大学信息与计算机学院,山西晋中030600
摘    要:图像集分类算法种类较多,但多数存在运算繁琐、计算成本高和时效性差的问题。为此,提出一种改进的图像重建与识别算法,利用线性回归分类和共享最近邻子空间分类理论进行图像重建和分类,通过将图像下采样建立的高维空间重建为子空间,避免计算复杂度较高的训练过程。利用各个类别的图像集子空间对测试图像进行回归模型估计,根据回归模型重建测试集中的图像,基于重建图像和原始图像间重建误差最小化法,采用加权投票策略对测试集进行估计以确定图像所属的类别。在UCSD/Honda、CMU、ETH-8和YouTube数据集上进行实验,结果表明,在低分辨率采样条件下,与ADNT算法相比,该算法平均分类精度提高3.6%,运算效率提高10倍,其最快响应时间缩短至2.8 ms。

关 键 词:图像集分类  LRC-SNN回归模型  误差最小化  加权投票策略  分类精度  计算速度

Efficient Image Reconstruction and Recognition Based on LRC-SNN
SUO Jing,SONG Linlin,LI Qiang.Efficient Image Reconstruction and Recognition Based on LRC-SNN[J].Computer Engineering,2020,46(7):243-250,259.
Authors:SUO Jing  SONG Linlin  LI Qiang
Affiliation:(Department of Electronic Engineering,Taiyuan Institute of Technology,Taiyuan 030000,China;College of Information and Computer,Taiyuan University of Technology,Jinzhong,Shanxi 030600,China)
Abstract:Most of existing classification methods for image sets are costly,having high computational complexity and poor timeliness.To address the problem,this paper proposes an improved image reconstruction and recognition algorithm.The algorithm uses the Linear Regression Classification(LRC)and Share Nearest Neighbor(SNN)subspace classification theory for image reconstruction and classification.The high-dimensional space built by image subsampling is taken as subspace to avoid the training process with high computational complexity.Then,subspace of different categories of image sets is used to implement regression model estimation for test images.For images in the test set of regression model reconstruction,their categories are determined by using the weighted voting strategy to estimate the test set under the principle that the errors between reconstructed images and original images should be minimized.Experimental results on UCSD/Honda,CMU,ETH-8 and YouTube datasets show that under low-resolution sampling conditions,compared with the ADNT algorithm,the proposed algorithm increases the average classification accuracy by 3.6%,computational efficiency by 10 times,and shortens the fastest response time to 2.8 ms.
Keywords:image set classification  LRC-SNN regression model  error minimization  weighted voting strategy  classification accuracy  computational speed
本文献已被 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司    京ICP备09084417号-23

京公网安备 11010802026262号