The invention discloses a high-resolution SAR
terrain classification method based on multiscale
convolution and
feature fusion, and mainly aims at solving the problem in the prior art that the classification precision is low and
overfitting easily occurs. The high-resolution SAR
terrain classification method comprises the steps of 1, extracting textural features and
wavelet features of to-be-classified images; 2, fusing the to-be-classified images, the textural features and the
wavelet features to constitute a fusion
feature matrix; 3, according to the fusion
feature matrix, constructing a training dataset and a testing dataset; 4, adding a multiscale
convolution layer and a shuffle layer to an existing CNN network, changing a full-joint layer into a
convolution layer, and constructing a multiscale convolution fusion network; 5, using the training dataset to
train the multiscale convolution fusion network to obtain
model parameters; 6, using the
model parameters to initialize the multiscale fusion network to classify a
test set. By means of the high-resolution SAR
terrain classification method based on the multiscale convolution and the
feature fusion, the parameters of the networkare reduced, the
overfitting phenomenon of a
small sample problem is solved, the classification precision is improved, and the high-resolution SAR
terrain classification method can be applied to high-resolution SAR image
terrain classification.