Abstract

Although the existing traditional image classification methods have been widely applied in practical problems, there are some problems in the application process, such as unsatisfactory effects, low classification accuracy, and weak adaptive ability. This method separates image feature extraction and classification into two steps for classification operation. The deep learning model has a powerful learning ability, which integrates the feature extraction and classification process into a whole to complete the image classification test, which can effectively improve the image classification accuracy. However, this method has the following problems in the application process: first, it is impossible to effectively approximate the complex functions in the deep learning model. Second, the deep learning model comes with a low classifier with low accuracy. So, this paper introduces the idea of sparse representation into the architecture of the deep learning network and comprehensively utilizes the sparse representation of well multidimensional data linear decomposition ability and the deep structural advantages of multilayer nonlinear mapping to complete the complex function approximation in the deep learning model. And a sparse representation classification method based on the optimized kernel function is proposed to replace the classifier in the deep learning model, thereby improving the image classification effect. Therefore, this paper proposes an image classification algorithm based on the stacked sparse coding depth learning model-optimized kernel function nonnegative sparse representation. The experimental results show that the proposed method not only has a higher average accuracy than other mainstream methods but also can be good adapted to various image databases. Compared with other deep learning methods, it can better solve the problems of complex function approximation and poor classifier effect, thus further improving image classification accuracy.

Highlights

  • According to the Internet Center (IDC), the total amount of global data will reach 42ZB in 2020

  • (4) In order to improve the classification effect of the deep learning model with the classifier, this paper proposes to use the sparse representation classification method of the optimized kernel function to replace the classifier in the deep learning model

  • A deep learning model based on stack sparse coding is proposed, which introduces the idea of sparse representation into the architecture of the deep learning network and comprehensive utilization of sparse representation of good multidimensional data linear decomposition ability and deep structural advantages of multilayer nonlinear mapping

Read more

Summary

Introduction

According to the Internet Center (IDC), the total amount of global data will reach 42ZB in 2020. More than 70% of the information is transmitted by image or video. To extract useful information from these images and video data, computer vision emerged as the times require. Computer vision technology has developed rapidly in the field of image classification [1, 2], face recognition [3, 4], object detection [5,6,7], motion recognition [8, 9], medicine [10, 11], and target tracking [12, 13]. As an important research component of computer vision analysis and machine learning, image classification is an important theoretical basis and technical support to promote the development of artificial intelligence. A large number of image classification methods have been proposed in these applications, which are generally divided into the following four categories. (1) Image classification methods based on statistics: it is a method based on the least error, and it is a popular image statistical model with the Bayesian model [20] and Markov model [21, 22]. (2) Image classification methods

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call