Abstract

Image has become one of the important carriers of visual information because of its large amount of information, easy to spread and store, and strong sense of sense. At the same time, the quality of image is also related to the completeness and accuracy of information transmission. This research mainly discusses the superresolution reconstruction of remote sensing images based on the middle layer supervised convolutional neural network. This paper designs a convolutional neural network with middle layer supervision. There are 16 layers in total, and the seventh layer is designed as an intermediate supervision layer. At present, there are many researches on traditional superresolution reconstruction algorithms and convolutional neural networks, but there are few researches that combine the two together. Convolutional neural network can obtain the high-frequency features of the image and strengthen the detailed information; so, it is necessary to study its application in image reconstruction. This article will separately describe the current research status of image superresolution reconstruction and convolutional neural networks. The middle supervision layer defines the error function of the supervision layer, which is used to optimize the error back propagation mechanism of the convolutional neural network to improve the disappearance of the gradient of the deep convolutional neural network. The algorithm training is mainly divided into four stages: the original remote sensing image preprocessing, the remote sensing image temporal feature extraction stage, the remote sensing image spatial feature extraction stage, and the remote sensing image reconstruction output layer. The last layer of the network draws on the single-frame remote sensing image SRCNN algorithm. The output layer overlaps and adds the remote sensing images of the previous layer, averages the overlapped blocks, eliminates the block effect, and finally obtains high-resolution remote sensing images, which is also equivalent to filter operation. In order to allow users to compare the superresolution effect of remote sensing images more clearly, this paper uses the Qt5 interface library to implement the user interface of the remote sensing image superresolution software platform and uses the intermediate layer convolutional neural network and the remote sensing image superresolution reconstruction algorithm proposed in this paper. When the training epoch reaches 35 times, the network has converged. At this time, the loss function converges to 0.017, and the cumulative time is about 8 hours. This research helps to improve the visual effects of remote sensing images.

Highlights

  • Superresolution reconstruction is the process of obtaining the highest quality image from one or more low-resolution images through signal processing and image processing methods

  • The algorithm training is mainly divided into four stages: the original remote sensing image preprocessing, the remote sensing image temporal feature extraction stage, the remote sensing image spatial feature extraction stage, and the remote sensing image reconstruction output layer

  • We will divide into 5 groups according to the input method, each group contains 6 types of recurrent neural networks, we can see that the method of first facing the pixel neighborhood has higher accuracy, recall and accuracy, the input method of larger neighborhood can significantly improve the recall rate and accuracy rate, and the combination of CNN can further improve the recall rate and accuracy rate

Read more

Summary

Introduction

Superresolution reconstruction (superresolution, SR) is the process of obtaining the highest quality image from one or more low-resolution images through signal processing and image processing methods. After the low-resolution (LR) small image is enlarged by interpolation (convolved with the interpolation function), it is enlarged to the required size and reconstructed by the reconstruction algorithm. The image superresolution technology can provide more effective information for the detection, recognition, and understanding of small targets in remote sensing images. The image superresolution reconstruction technology overcomes the limitation of the inherent resolution of imaging equipment and considers the influence of Journal of Sensors down sampling, blurring, noise, and other factors in the image degradation process. It improves the resolution of the image and improves the reconstructed the quality of image. In the field of image processing today, superresolution reconstruction algorithms are a hot issue that has attracted widespread attention

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