Target detection method based on multi-feature fusion of full convolutional network

A multi-feature fusion, fully convolutional network technology, applied in neural learning methods, biological neural network models, instruments, etc., to achieve the effect of improving detection flexibility, improving detection accuracy, and improving model training and testing time

Active Publication Date: 2018-01-09
ACADEMY OF BROADCASTING SCI STATE ADMINISTATION OF PRESS PUBLICATION RADIO FILM & TELEVISION +1
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AI Technical Summary

Problems solved by technology

[0004] Although the target detection algorithm has achieved good results after decades of development, and the emergence of convolutional neural networks has greatly improved the target d

Method used

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  • Target detection method based on multi-feature fusion of full convolutional network
  • Target detection method based on multi-feature fusion of full convolutional network
  • Target detection method based on multi-feature fusion of full convolutional network

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Embodiment Construction

[0037] Embodiments of the present invention will be described in further detail below in conjunction with the accompanying drawings.

[0038] A target detection method based on multi-feature fusion of fully convolutional network, such as figure 1 shown, including the following steps:

[0039] Step 1. Construct the following fully convolutional neural network structure:

[0040]

[0041] In each convolutional layer group, we mostly use 3*3 filters, and double the number of channels of the filter after each step of the maximum pooling operation, 1*1 filtering between 3*3 filters The filter is used to compress features.

[0042] Step 2. Use the first 5 sets of convolutional layers of the convolutional neural network to extract image features, and fuse their outputs to form a fusion feature map:

[0043] (1) First input the image with the real frame of the target into the fully convolutional neural network structure described in step 1, so that the input image is processed b...

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Abstract

The invention designs a target detection method based on multi-feature fusion of a full convolutional network. The main technical features are that constructing a full convolutional neural network having six convolutional layer groups; using the first five groups of convolutional layers of the convolutional neural network to extract image features, and outputting the image features to be fused toform a fusion feature chart; performing convolutional processing on the fused feature map to directly generate a fixed number of target frames of different sizes; and calculating a classification error and positioning error between the target frames generated by the convolutional neural network and real frames, utilizing a random gradient descent method to reduce a training error to obtain parameters of a final training model, and finally carrying out a test to obtain a target detection result. The target detection method based on multi-feature fusion of the full convolutional network utilizesa powerful capability of representing a target of a deep convolutional network, constructs the full convolutional neural network used for target detection, proposes a new fusion feature method, improves detection speed and precision of an algorithm, and obtains a good target detection result.

Description

technical field [0001] The invention belongs to the technical field of target detection, in particular to a target detection method based on multi-feature fusion of a fully convolutional network. Background technique [0002] As one of the important research topics of computer vision, target detection is widely used in various fields such as national defense and military, public transportation, social security and commercial applications. Therefore, the research on target detection algorithm has very important military and commercial value. The so-called target detection is to identify the target by analyzing the characteristics of the target in the image or video, obtain the category and location information of the target, and provide help for further analysis and understanding of the target, such as target tracking and analysis based on image content, etc. . However, targets usually have variable factors such as different shapes, colors, brightness, and occlusions, and t...

Claims

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Application Information

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IPC IPC(8): G06K9/32G06N3/08
Inventor 郭亚婧郭晓强姜竹青周芸门爱东王强付光涛
Owner ACADEMY OF BROADCASTING SCI STATE ADMINISTATION OF PRESS PUBLICATION RADIO FILM & TELEVISION
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