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Multi-task neural network framework for remote sensing scene classification and classification method

A scene classification and neural network technology, applied in the multi-task neural network framework and classification field, can solve the problems of low classification accuracy and inaccurate scene recognition, and achieve the effect of improving the discrimination ability.

Active Publication Date: 2020-06-16
XI'AN INST OF OPTICS & FINE MECHANICS - CHINESE ACAD OF SCI
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Problems solved by technology

[0010] The purpose of the present invention is to provide a multi-task neural network framework and classification method for remote sensing scene classification, to solve the existing neural network framework and classification method for remote sensing scene classification, due to limitations in the amount of information, scene recognition is not Accurate, technical issues with low classification accuracy

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  • Multi-task neural network framework for remote sensing scene classification and classification method
  • Multi-task neural network framework for remote sensing scene classification and classification method
  • Multi-task neural network framework for remote sensing scene classification and classification method

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Embodiment Construction

[0047] The present invention will be described in detail below in conjunction with the accompanying drawings and specific embodiments.

[0048] see figure 1 , the present invention is a multi-task neural network framework for remote sensing scene classification, comprising a convolutional feature extraction layer, a classification task fully connected feature extraction layer, a classification task discrimination layer, a classification task loss layer, an auxiliary task fully connected feature extraction layer, Auxiliary task discriminative layer, auxiliary task loss layer, classification task feature map layer, auxiliary task feature map layer, and relational learning loss layer.

[0049] The convolution feature extraction layer extracts the input image feature, and the output convolution feature map; in the present embodiment, the convolution feature extraction layer is AlexNet (Alex network, wherein Alex is a person's name.), and the convolution feature extraction layer is...

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Abstract

The invention relates to a neural network framework for remote sensing scene classification and a classification method, in particular to a multi-task neural network framework for remote sensing sceneclassification and a classification method, and solves the problems of limitation of information amount, inaccurate scene recognition and low classification precision of existing network frameworks and classification methods. The network framework comprises a convolution feature extraction layer, a classification task full-connection feature extraction layer, a classification task discriminationlayer and a classification task loss layer; the network framework is characterized by further comprising an auxiliary task full-connection feature extraction layer, an auxiliary task discrimination layer, an auxiliary task loss layer, a classification task feature mapping layer, an auxiliary task feature mapping layer and a relationship learning loss layer. Wherein the two feature mapping layers respectively carry out dimensionality reduction on full-connection feature vectors adapted to two tasks, the relation learning loss layer carries out subtraction on the vectors after dimensionality reduction and takes norms of difference vectors as relation learning losses, and the relation learning losses and discrimination losses of the two tasks are added into optimization training together.

Description

technical field [0001] The invention relates to a neural network framework and a classification method for remote sensing scene classification, in particular to a multi-task neural network framework and classification method for remote sensing scene classification. Background technique [0002] The goal of the high-score remote sensing scene classification task is to distinguish the foreground of interest from the background and other foregrounds according to the information of the input image. [0003] Scene classification methods can be divided into two types based on manual features and based on deep learning. The method based on manual features uses artificially designed features. In the past period of time, this method has achieved good results; but with the rise of deep learning, the disadvantages of manual feature-based methods relying on human factors have been revealed, and depth Learning can independently learn favorable features, which greatly improves the averag...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06K9/46G06N3/04G06N3/08
CPCG06N3/08G06V20/13G06V10/462G06N3/045
Inventor 卢孝强张园林郑向涛黄举
Owner XI'AN INST OF OPTICS & FINE MECHANICS - CHINESE ACAD OF SCI
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