Deep network lung texture recognition method combined with multi-scale attention

A recognition method and deep network technology, applied in the fields of medical image processing and computer vision, can solve the problem of not paying attention to learning lung texture scale feature information, affecting the final recognition accuracy, etc., to improve the recognition accuracy, easy to construct, and simple to program. Effect

Pending Publication Date: 2020-10-02
DALIAN UNIV OF TECH
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AI Technical Summary

Problems solved by technology

First, lung textures in CT images present two radiological features, grayscale and scale information. Currently, most CNNs used for lung texture recognition only use grayscale feature information, and have not yet focused on learning the scale features contained in lung textures. information, so it is necessary to design and use a mechanism to enable CNN to learn multi-scale feature information of lung texture
Second, the CNN parameters currently used for lung texture recognition are generally large in size. The feature maps learned by the convolutional layer in CNN have redundant information, which affects the final recognition accuracy. It is necessary to design and use a mechanism to automatically screen for the recognition task. Feature maps, while automatically suppressing feature maps that are weakly related to the recognition task to reduce the impact of redundant information in the feature map and improve the final recognition accuracy

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  • Deep network lung texture recognition method combined with multi-scale attention
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  • Deep network lung texture recognition method combined with multi-scale attention

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Embodiment Construction

[0034] The present invention proposes a deep network lung texture recognition method combined with multi-scale attention, which is described in detail in conjunction with the accompanying drawings and embodiments as follows:

[0035] The present invention builds a recognition network, uses convolution and residual modules to construct the basic network, uses the multi-scale feature fusion module to learn the multi-scale feature information contained in the lung texture, and uses the attention mechanism module to automatically screen the features that are beneficial to the recognition task information, while automatically suppressing feature information that is weakly related to the recognition task. Using CT lung texture image blocks for training, a high recognition accuracy rate was achieved in the test. The specific implementation process is as follows: figure 1 As shown, the method comprises the following steps;

[0036] 1) Initial data preparation: The initial data includ...

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Abstract

The invention discloses a deep network lung texture recognition method combining multi-scale attention, and belongs to the field of image processing and computer vision. In order to accurately identify typical textures of diffuse lung diseases in a computed tomography (CT) image of a lung, the invention provides a lung diffuse lung disease identification method. By designing a unique attention mechanism module and a multi-scale feature fusion module, a multi-scale and attention combined deep convolutional neural network is constructed, and high-precision automatic identification of typical textures of diffuse lung diseases is realized. In addition, the proposed network structure is clear, easy to construct and easy to implement.

Description

technical field [0001] The invention belongs to the fields of medical image processing and computer vision, and in particular relates to a deep network lung texture recognition method combined with multi-scale attention. Background technique [0002] Diffuse lung disease refers to the general term for abnormal texture of the lung interstitium in the lung area caused by factors such as inflammation or injury. CT images are often used for the detection of such diseases because they can clearly present the state of lung tissue. However, due to factors such as the large number of collected images and the complexity of lung textures, it is difficult even for experienced radiologists to accurately identify different types of lung textures, resulting in missed diagnosis and misdiagnosis. Therefore, it is necessary to establish a computer-aided diagnosis (ComputerAided Diagnosis, CAD) system to assist radiologists in performing accurate and efficient automatic diagnosis of lung tex...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/41G06K9/62
CPCG06T7/41G06T2207/10081G06T2207/20081G06T2207/20084G06T2207/30061G06F18/253G06V10/82G06V2201/031G06V10/776G16H30/40G16H50/20G06N3/08G06N3/048G06N3/045G06F18/2137G06F18/214G06F18/217
Inventor 徐睿叶昕辰丛臻
Owner DALIAN UNIV OF TECH
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