激光技术, 2018, 42 (5): 666, 网络出版: 2018-09-11   

加权联合降维的深度特征提取与分类识别算法

Deep feature extraction and classification recognition algorithm based on weighting and dimension reduction
作者单位
曲阜师范大学 物理工程学院, 曲阜 273165
摘要
为了降低卷积神经网络计算的复杂度, 改善特征提取过程中的过拟合现象, 解决经典网络模型不能有效处理大尺寸图片的问题, 采用了加权联合降维的特征融合与分类识别算法, 根据两特征的识别贡献率对主成分分析法(PCA)降维处理和随机投影(RP)处理结果进行加权融合, 然后将结果提供给卷积神经网络进行处理,提取图像分类的高层特征, 使用欧氏距离分类器对识别对象进行分类, 并进行了理论分析和实验验证。结果表明, 经过加权联合降维对数据进行预处理, PCA矩阵与RP降维矩阵之比重达到6∶4, 识别率高达96%以上。该算法有效提高了准确率, 使大尺寸图片在深度学习网络中有良好的识别效果, 改善了网络的适应性。
Abstract
In order to reduce the computational complexity of convolution neural network, improve the over-fitting phenomenon in the process of feature extraction and solve the problem that the classic network model can not effectively deal with large size images, deep feature extraction and classification recognition algorithm based on weighting and dimension reduction was adopted. Based on recognition contribution rate of two features, the results of dimensionality reduction of principal component analysis (PCA) and random projection (RP) method were fused with weighted average, then the results were provided to convolution neural network and the high-level features of image classification were extracted. Euclidean distance classifier was used to classify the recognition objects. After theoretical analysis and experimental verification, the results show that the weight ratio of PCA matrix and RP reduction matrix is 6∶4, and the recognition rate is over 96% after the preprocess of data by weighting and dimension reduction. This algorithm improves the accuracy effectively, makes large size pictures having good recognition effect in deep learning network and improves the adaptability of network.

冯玮, 王玉德, 张磊. 加权联合降维的深度特征提取与分类识别算法[J]. 激光技术, 2018, 42(5): 666. FENG Wei, WANG Yude, ZHANG Lei. Deep feature extraction and classification recognition algorithm based on weighting and dimension reduction[J]. Laser Technology, 2018, 42(5): 666.

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