Remote Sensing Image Classification Based on Canny Operator Enhanced Edge Features
Remote Sensing Image Classification Based on Canny Operator Enhanced Edge Features
Blog Article
Remote sensing image classification plays a crucial role in the field of remote sensing interpretation.With the exponential growth of multi-source remote sensing data, accurately extracting target features and comprehending target attributes from complex images significantly impacts classification accuracy.To address these challenges, we propose a Canny edge-enhanced multi-level attention feature fusion network (CAF) for Stock Saddle Pads remote sensing image classification.
The original image is specifically inputted into a convolutional network for the extraction of global features, while increasing the depth of the convolutional layer facilitates feature extraction at various levels.Additionally, to emphasize detailed target features, we employ the Canny operator for edge information extraction and utilize a convolution layer to capture deep edge features.Finally, by leveraging the Attentional Feature Fusion (AFF) network, we fuse global and detailed features to obtain more discriminative representations for scene classification tasks.
The performance of our proposed method (CAF) is evaluated through experiments conducted across three openly accessible datasets for classifying scenes in remote sensing images: NWPU-RESISC45, UCM, and MSTAR.The experimental 4 Piece Sectional with Chaise findings indicate that our approach based on incorporating edge detail information outperforms methods relying solely on global feature-based classifications.