Abstract
In This Paper, an Innovative Method Called Extreme Learning Machine with Hybrid Local Receptive Fields (Elm-Hlrf) is Presented for Image Classification. in This Method, Filters Generated by Gabor Functions and the Randomly Generated Convolution Filters Are Incorporated into the Convolution Filter Kernels of Local Receptive Fields based Extreme Learning Machine (Elm-Lrf). Extreme Learning Machine (Elm) is Derived from Single Hidden Layer Feed-Forward Neural Networks, and the Parameters of its Hidden Layer Can Be Generated Randomly. as Locally Connected Elm, Elm-Lrf Directly Processes Information with Strong Correlations Such as Images and Speech. in This Paper, Two Main Contributions Are Proposed to Improve the Classification Performance of Elm-Lrf. First, the Gabor Functions Are Used as One Kind of Convolution Filter Kernels of Elm-Hlrf to Execute Image Classification. Second, We Use a Data Augmentation Method to Preprocess Training Images to Avoid overfitting. Experiments on the Outex Texture Dataset, the Yale Face Dataset, the Orl Face Database and the Norb Dataset Demonstrate that Elm-Hlrf Outperforms Elm-Lrf, Elm and Support Vector Machine in Classification Accuracy, and the Presented Data Augmentation Method Improves the Classification Performance.
Recommended Citation
B. He et al., "Local Receptive Fields based Extreme Learning Machine with Hybrid Filter Kernels for Image Classification," Multidimensional Systems and Signal Processing, vol. 30, no. 3, pp. 1149 - 1169, Springer, Jul 2019.
The definitive version is available at https://doi.org/10.1007/s11045-018-0598-9
Department(s)
Engineering Management and Systems Engineering
Keywords and Phrases
Data augmentation; Extreme learning machine; Gabor filters; Image classification; Local receptive fields
International Standard Serial Number (ISSN)
1573-0824; 0923-6082
Document Type
Article - Journal
Document Version
Citation
File Type
text
Language(s)
English
Rights
© 2024 Springer, All rights reserved.
Publication Date
01 Jul 2019
Comments
National Natural Science Foundation of China, Grant 51379198