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[Lecture Notes in Computer Science] Neural Information Processing Volume 11306 (25th International Conference, ICONIP 2018, Siem Reap, Cambodia, December 13–16, 2018, Proceedings, Part VI) || Fast Image Recognition with Gabor Filter and Pseudoinverse Learning AutoEncoders

DOI:10.1007/978-3-030-04224-0_43 出版年份:2018 更新时间:2025-09-23 15:19:57
摘要: Deep neural network has been successfully used in various ?elds, and it has received signi?cant results in some typical tasks, especially in computer vision. However, deep neural network are usually trained by using gradient descent based algorithm, which results in gradient vanishing and gradient explosion problems. And it requires expert level professional knowledge to design the structure of the deep neural network and ?nd the optimal hyper parameters for a given task. Consequently, training a deep neural network becomes a very time consuming problem. To overcome the shortcomings mentioned above, we present a model which combining Gabor ?lter and pseudoinverse learning autoencoders. The method referred in model optimization is a non-gradient descent algorithm. Besides, we presented the empirical formula to set the number of hidden neurons and the number of hidden layers in the entire training process. The experimental results show that our model is better than existing benchmark methods in speed, at same time it has the comparative recognition accuracy also.
作者: Xiaodan Deng,Sibo Feng,Ping Guo,Qian Yin
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研究概述 实验方案

To overcome the shortcomings of deep neural networks, such as gradient vanishing and gradient explosion problems, and the time-consuming training process, by presenting a model that combines Gabor filter and pseudoinverse learning autoencoders for fast image recognition.

The proposed model combining Gabor filter and pseudoinverse learning autoencoder integrates the advantages of both, offering fast training speed and comparable recognition accuracy. It is easy to use even for persons without professional knowledge, contributing to the democratization of artificial intelligence.

The method performs well on MNIST data set but does not obtain good test accuracy on CIFAR10 data set, possibly due to the loss of color information when only one color channel is used. Future work will focus on processing color images and designing more complicated network architecture to improve classification accuracy.

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