Unmanned aerial vehicle aerial image target detection method based on improved YOLO V5

A target detection and aircraft-based technology, applied in the field of deep learning and target detection, can solve problems such as difficult detection, insufficient real-time performance, and complex backbone network

Active Publication Date: 2021-12-17
SOUTHEAST UNIV
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AI Technical Summary

Problems solved by technology

[0005] The purpose of the present invention is to solve the problem that YOLO V5 is applied to the target detection of UAV aerial images because the detection targets are aggregated into small targets, which makes the detection difficult, and the backbone network is complicated, resulting in insufficient real-time performance. YOLO V5's UAV aerial photography target detection method, which can improve the YOLO V5 backbone network architecture on the premise of improving the accuracy of the original YOLO V5, lightweight its network model, improve its reasoning speed, and achieve fast and accurate UAV Aerial Object Detection

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[0038] The technical solutions of the present invention will be described in detail below in conjunction with the accompanying drawings.

[0039] Such as figure 1 As shown, the present invention provides an improved YOLO V5 drone aerial image target detection method.

[0040] Specific steps are as follows:

[0041] (1) Construct relevant data sets using aerial images of UAVs;

[0042] (2) Perform preprocessing on the image data set with category labels obtained in step (1) to obtain the feature map, and input the preprocessed feature map to the improved YOLO V5 network to obtain drone aerial photography of different scales Image feature map; the improved YOLO V5 network refers to using the convolution layer to replace the slice layer in the Focus module in the backbone network, and successively connect the convolution layer module (referred to as CBL), cross-stage local network (referred to as CSP), space Pyramid pooling module (referred to as (SSP);

[0043] (3) The UAV a...

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Abstract

The invention discloses an unmanned aerial vehicle aerial image target detection method based on improved YOLO V5, and belongs to the field of deep learning and target detection. The method comprises the following steps: constructing a related data set by using aerial images of an unmanned aerial vehicle; secondly, replacing a slice layer in a Focus module by using a convolutional layer in a YOLO V5 backbone network part; using the Neck part to further process the image features; then, for the problems of target stray distribution and too small target pixel ratio caused by a high-altitude aerial photography view angle of the unmanned aerial vehicle, optimizing and eliminating a 76 * 76 * 255 large detection head in a network prediction layer part, and adjusting an anchor frame at the same time; and finally, evaluating target detection performance through generalization intersection-union ratio, average precision and reasoning speed. According to the method, on the basis of improving the recognition accuracy and the feature extraction performance, the unmanned aerial vehicle aerial image target can be rapidly and accurately detected.

Description

technical field [0001] The invention relates to an improved YOLO V5-based target detection method for aerial images of unmanned aerial vehicles, belonging to the technical field of deep learning and target detection. Background technique [0002] The intelligent perception of drone images can not only efficiently extract ground object information, but also expand the scene understanding ability of drones, and provide technical support for autonomous detection and flight of drones. Target detection is one of the key technologies to improve the intelligent perception of UAV images. However, UAV aerial images generally have the characteristics of complex background, dense distribution of targets, small scale, and large angle differences of the same category of targets. The traditional "manual feature extraction + classifier-based" target detection algorithm can no longer meet the detection accuracy requirements in complex environments and multi-scales. With the high efficiency...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62G06N3/04G06N3/08
CPCG06N3/084G06N3/045G06F18/24G06F18/214
Inventor 程向红曹毅胡彦钟张文卓钱荣辉
Owner SOUTHEAST UNIV
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