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Semi-automatic vegetation remote sensing sample selection method based on convolutional neural network

A convolutional neural network, semi-automatic technology, applied in biological neural network models, neural architectures, instruments, etc., can solve the problems of scarcity of samples in mountain vegetation classification, mountain vegetation remote sensing classification samples, and human training samples. Scarcity of samples and the effect of increasing the degree of automation

Pending Publication Date: 2022-01-28
FUZHOU PLANNING DESIGN & RES INST
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Problems solved by technology

In order to solve the problem that traditional vegetation mapping consumes a lot of manpower, material resources and time, and the training samples are scarce in vegetation remote sensing classification, the present invention designs a semi-automatic vegetation sample selection technology based on deep convolutional neural network. This technology makes full use of historical sampling Data and other prior knowledge, construct a set of universal knowledge transfer model, improve the automation of sample collection in the target research area, and solve the problem of scarcity of samples in mountainous vegetation classification to a certain extent
The invention can solve the problem of scarcity of samples for remote sensing classification of mountain vegetation to a certain extent, and greatly improves the automation of vegetation mapping

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  • Semi-automatic vegetation remote sensing sample selection method based on convolutional neural network
  • Semi-automatic vegetation remote sensing sample selection method based on convolutional neural network
  • Semi-automatic vegetation remote sensing sample selection method based on convolutional neural network

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[0040] In order to make the features and advantages of this patent more obvious and easy to understand, the following specific examples are given together with the accompanying drawings and described in detail as follows:

[0041] like figure 2 As shown, the semi-automatic vegetation remote sensing sample selection method based on deep convolutional neural network provided by this embodiment includes the following steps:

[0042] Step S1: Construct a multi-source and multi-temporal remote sensing database using high-resolution remote sensing images and DEM data in spring and autumn;

[0043]Step S2: According to the classification system of the Chinese vegetation map (1:1 million), the vegetation in the study area is divided into m vegetation groups;

[0044] Step S3: According to the number m of vegetation groups in the study area, construct a deep residual network ResNet 18, and change the number of network output categories to m;

[0045] Step S4: Using the public vegeta...

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Abstract

The invention provides a semi-automatic vegetation remote sensing sample selection method based on a convolutional neural network. The method comprises the following steps of S1, constructing a multi-source multi-temporal remote sensing database, S2, dividing vegetation in the research area into m vegetation groups, S3, constructing a deep residual network, and changing the number of network output categories into m, S4, using the public vegetation sample data set to train a deep residual network, and enabling model parameters to be suitable for vegetation group classification, S5, segmenting the image of the research area into vegetation group pattern spots by adopting a multi-scale segmentation algorithm, S6, selecting n representative samples of m vegetation types, and taking m*n samples as seed samples of sample selection, S7, calculating network output of all individual pattern spots in the research area, and S8, calculating network output of the seed sample. The problem of sample scarcity in mountainous area vegetation classification is solved to a certain extent.

Description

technical field [0001] The invention relates to the technical field of mountainous vegetation remote sensing, in particular to a method for selecting semi-automatic vegetation remote sensing samples based on a convolutional neural network. Background technique [0002] Vegetation map reflects the quality, quantity, type and spatial distribution of vegetation resources, and is a key tool for fully, rationally and sustainably utilizing vegetation resources. At present, there are two main methods of vegetation mapping: traditional vegetation mapping based on field surveys and remote sensing vegetation mapping supported by remote sensing data. The compilation of traditional vegetation type maps is mainly based on a large number of ground surveys, combined with the clear drawing of some aerial photos in the room. Although this method has a high accuracy rate, it is time-consuming and labor-intensive, and is often only able to cover a small area due to factors such as terrain, en...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06V10/26G06V10/74G06V10/774G06V10/82G06V20/10G06K9/62G06N3/04
CPCG06N3/045G06F18/22G06F18/214
Inventor 胡宇凡姚永慧王文奎陈奕蒋艳君
Owner FUZHOU PLANNING DESIGN & RES INST
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