Fine-grained image classification method based on feature pyramid and global average pooling

A feature pyramid and classification method technology, applied in character and pattern recognition, instruments, calculations, etc., can solve problems such as target positioning areas with less calculation overhead, and achieve excellent target positioning capabilities, reduce interference, and reduce calculation overhead.

Active Publication Date: 2020-12-11
江苏亿友慧云软件股份有限公司
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Problems solved by technology

[0008] In view of the above-mentioned defects in the prior art, the task of the present invention is to provide a fine-grained image classification method based on feature pyramid and global average pooling, which uses less computational overhead to solve the noise problem in the target positioning area, and improves the efficiency of target object extraction. feature robustness

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  • Fine-grained image classification method based on feature pyramid and global average pooling
  • Fine-grained image classification method based on feature pyramid and global average pooling
  • Fine-grained image classification method based on feature pyramid and global average pooling

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Embodiment Construction

[0027] The present invention will be further described below in conjunction with the examples, but not as a limitation of the present invention.

[0028] The overall framework of the fine-grained image classification method based on feature pyramid and global average pooling involved in this embodiment is as follows figure 1 shown. Specific steps are as follows:

[0029] Step 1. Input the image into the convolutional layer of the pre-trained convolutional neural network to obtain a multi-channel feature map;

[0030] Step 2. The multi-channel feature map passes through the global average pooling layer to obtain the saliency map of the input image, and extract the position information of the target;

[0031] Step 3, the feature pyramid network extracts the features of the multi-channel feature map and predicts to obtain K local regions with the largest amount of information;

[0032] Step 4: Aggregating the local features of the K local regions and the global features obtain...

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Abstract

The invention discloses a fine-grained image classification method based on feature pyramid and global average pooling, comprising the following steps: step 1, image input into the convolutional layer of a pre-trained convolutional neural network to obtain a multi-channel feature map; step 2 , the feature map of the multi-channel passes through the global average pooling layer to obtain the saliency map of the input image, and extract the position information of the target; step 3, the feature pyramid network extracts the features of the feature map of the multi-channel and predicts to obtain the largest amount of information K local areas; step 4, aggregating the local features of the K local areas and the global features of the input image through the convolutional neural network to predict and output the final recognition category. The method of the invention reduces the influence of background noise, enhances the robustness of local area selection, and improves the recognition accuracy.

Description

technical field [0001] The invention relates to a fine-grained image classification method, in particular to a fine-grained image classification method based on feature pyramid and global average pooling. Background technique [0002] Fine-grained image recognition is a concept in the field of image processing. Traditional image recognition can only recognize the large categories of objects in the image, which is called coarse-grained image recognition. However, there are usually many subcategories under the same category, and traditional image recognition methods cannot determine the specific subcategory to which the target belongs. Fine-grained image recognition can classify the targets in the image more finely, and the granularity of the classification is finer. It is required to determine the specific subcategory of the target under the large category to meet the requirements of higher image recognition in different scenarios. Require. [0003] Early fine-grained class...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/62G06K9/46
CPCG06V10/462G06F18/24G06F18/214
Inventor 龚声蓉周少雄王朝晖应文豪李菊
Owner 江苏亿友慧云软件股份有限公司
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