Remote sensing image classification method, storage medium and computing equipment
A remote sensing image and classification method technology, applied in the field of image processing, can solve problems such as difficulty in fully capturing and extracting multi-scale features, and achieve the effects of increasing multi-scale features, accelerating convergence speed, and enhancing stability
Image
Examples
Embodiment Construction
[0052] The present invention provides a remote sensing image classification method, storage medium and computing device based on a dual-branch deep multi-scale network, using atrous convolution to obtain multi-scale features of images, and then using a channel attention mechanism to adaptively fuse multi-scale features , and then the fused multi-scale features are extracted through the multi-layer residual module to extract high-level semantic information, and finally the image classification is realized through the fully connected layer and the softmax function.
[0053] see figure 1 , the present invention is a remote sensing image classification method based on double-branch deep multi-scale network, comprising the following steps:
[0054] S1. Create a remote sensing image set, standardize the samples, and obtain a training sample set and a test sample set;
[0055] S101. Acquire UC_Merced images, and establish a remote sensing image sample set I={I 1 , I 2 ,…I i ..., ...
PUM
Login to View More Abstract
Description
Claims
Application Information
- IPC
- G06K9/00; G06K9/46; G06K9/62; G06N3/04; G06N3/08
- CPC
- G06N3/08; G06V20/13; G06V10/464; G06N3/045; G06F18/2415; Y02D10/00
- Inventors
- 李玲玲; 梁普江



