Polarimetric SAR ground object recognition method based on learning superpixel and QCNN
The invention discloses a polarimetric SAR ground object recognition method based on learning superpixel and QCNN. The method comprises: acquiring polarimetric radar data; performing polarization decomposition on the polarized radar data to obtain a polarized radar pseudo-color image; classifying th...
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Main Authors | , , |
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Format | Patent |
Language | Chinese English |
Published |
12.11.2019
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Subjects | |
Online Access | Get full text |
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Summary: | The invention discloses a polarimetric SAR ground object recognition method based on learning superpixel and QCNN. The method comprises: acquiring polarimetric radar data; performing polarization decomposition on the polarized radar data to obtain a polarized radar pseudo-color image; classifying the polarized radar pseudo-color images based on a quaternion convolutional neural network of pixels to obtain a classification result; generating a plurality of super-pixel blocks by using a PAN network based on the polarized radar pseudo-color image; and generating a classification result of the polarized radar data based on the classification result of the polarized radar pseudo-color image and the superpixel block. According to the method, high-level semantic features in a color space are utilized, and local region segmentation better than that of a traditional superpixel generation method can be obtained. In combination with quaternion convolutional neural network pixel-level classification and PAN superpixel se |
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Bibliography: | Application Number: CN201910764394 |