Image classification method based on multi-scale dense convolutional neural network and spectral attention mechanism

A technology of convolutional neural network and classification method, which is applied to biological neural network models, neural architectures, computer components, etc., can solve the problem of complex space-spectral features of hyperspectral images extracted by deep models, difficulties in hyperspectral image labeling, and dimensionality reduction processing Problems such as large amount of calculation, to alleviate the problem of gradient disappearance, effective feature utilization, and small sample requirements

Active Publication Date: 2022-04-26
NORTHWESTERN POLYTECHNICAL UNIV
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Problems solved by technology

[0004] However, the existing methods for extracting spatial-spectral features of hyperspectral images using deep models are very complicated. It is often necessary to compress and reduce the dimension of the original hyperspectral image in the spectral space, and then extract the spatial and spectral features of the reduced data. Combined to get spatial spectral features
Dimensionality reduction is computationally intensive, and certain spectral information is lost, affecting accuracy
In addition, the existing methods for extracting spatial spectral features of hyperspectral images using deep models require a large number of training samples to train the network, but it is very difficult to mark the collected hyperspectral images in practice. plenty of time

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  • Image classification method based on multi-scale dense convolutional neural network and spectral attention mechanism
  • Image classification method based on multi-scale dense convolutional neural network and spectral attention mechanism
  • Image classification method based on multi-scale dense convolutional neural network and spectral attention mechanism

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[0031] Now in conjunction with embodiment, accompanying drawing, the present invention will be further described:

[0032] The technical solution of the present invention is a small-sample hyperspectral image classification method based on a multi-scale dense convolutional neural network and a spectral attention mechanism. The concrete measures of this technical scheme are as follows:

[0033] Step 1: Data preprocessing. The hyperspectral image data to be processed is subjected to maximum and minimum normalization.

[0034] Step 2: Data Segmentation. Count the number of labeled samples of each category in the hyperspectral image to be processed, and then extract 5 labeled samples from each category in proportion as training data, and the rest as test data.

[0035] Step 3: Build a network model. Construct a deep network model based on multi-scale dense convolutional neural network and spectral attention mechanism.

[0036] Step 4: Train the network model. The training da...

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Abstract

The invention relates to an image classification method based on a multi-scale dense convolutional neural network and a spectral attention mechanism. By using a dense connection mechanism to construct a multi-scale dense convolutional neural network, the dense connection mechanism can effectively alleviate the problem of gradient disappearance and strengthen Feature propagation encourages feature reuse and greatly reduces the number of parameters, reducing the demand for training samples in the network training process; in addition, the network is combined with the spectral attention mechanism to make more effective use of features in the spectral direction. The invention realizes autonomous extraction of depth features of hyperspectral images and high-precision classification under the condition of small samples. Compared with the existing hyperspectral image classification method based on deep learning, the present invention has smaller sample requirements and higher precision.

Description

technical field [0001] The invention relates to a small-sample hyperspectral image classification method based on a multi-scale dense convolutional neural network and a spectral attention mechanism, which belongs to the field of image processing. Background technique [0002] Hyperspectral remote sensing images have high spectral resolution, multiple imaging bands, and large amounts of information, and are widely used in remote sensing applications. Hyperspectral image classification technology is a very important content in hyperspectral image processing technology. It mainly includes two parts: feature extraction and classification. The classification features extracted from the original hyperspectral image have a great influence on the subsequent classification accuracy: the robustness of classification features Strong robustness can greatly improve the classification accuracy; on the contrary, classification features with poor robustness will significantly reduce the cla...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06V10/46G06V10/774G06V10/764G06K9/62G06N3/04
Inventor 李映房蓓张号逵
Owner NORTHWESTERN POLYTECHNICAL UNIV
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