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Method for detecting small and medium objects in a structured road based on deep learning

A deep learning, small object technology, applied in the field of target detection in specific scenarios, can solve the problems of inability to output small object detection results, large degree of downsampling, and large resource occupation, so as to facilitate location detection and category judgment, and speed up calculation. Speed, easy upsampling effect

Inactive Publication Date: 2019-04-05
TONGJI UNIV
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Problems solved by technology

[0003] First, the downsampling degree of the existing deep convolutional network is relatively large, and the small objects in the image have fewer pixels, and the information will be lost during the downsampling process, resulting in the network being unable to output the detection results of small objects;
[0004] Second, the existing deep convolutional network is to detect objects on the whole image, which takes a long time, takes up a lot of resources, and is prone to problems such as misidentification

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  • Method for detecting small and medium objects in a structured road based on deep learning
  • Method for detecting small and medium objects in a structured road based on deep learning
  • Method for detecting small and medium objects in a structured road based on deep learning

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Embodiment Construction

[0050] The present invention will be further described below in conjunction with the embodiments shown in the accompanying drawings.

[0051] The main steps of the detection method of the present invention include collecting image data and manually labeling, constructing a deep convolutional neural network suitable for detecting small objects in structured roads and corresponding loss functions, inputting images and labeling data into the neural network for training to get the final network parameters. The present invention proposes a brand-new network structure aimed at the current neural network's poor detection of small objects, which can greatly improve the performance of small object detection without increasing the amount of calculation, and can be easily deployed in existing In the intelligent driving system, the intelligent driving car can detect the dangerous objects on the road at a long distance and respond in time, which improves the safety during driving.

[0052...

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Abstract

A method for detecting small objects in a structured road based on deep learning comprises the steps that image data, containing the small objects, on the real structured road are collected, and the positions and the category information of the small objects in the structured road are marked through a manual method; Constructing a deep convolutional neural network suitable for small object detection in the structured road and a corresponding loss function; Inputting the acquired image and the labeled data into the convolutional neural network constructed in the previous step, updating the parameter value in the neural network according to the loss value between the output value and the target value, and finally obtaining an ideal network parameter. The invention provides a brand new network structure for the problem that the current neural network is poor in small object detection. On the premise that the calculated amount is not increased basically, the performance of small object detection is greatly improved, and the method can be conveniently deployed in an existing intelligent driving system, so that an intelligent driving automobile can detect dangerous objects on a road in along distance and respond in time, and the safety in the driving process is improved.

Description

technical field [0001] The invention belongs to the technical field of intelligent driving, and in particular relates to a target detection method in a specific scene combining computer vision with deep learning. Background technique [0002] Object detection is one of the basic tasks in the field of computer vision. In recent years, with the rapid development of deep learning technology, object detection algorithms have also shifted from traditional algorithms based on manual features to detection technologies based on deep neural networks. The method of target detection has developed from the initial R-CNN and OverFeat to the more mature Fast / Faster R-CNN, SSD, YOLO series, until the latest CornerNet, from the PC side to the mobile phone side, many good ones have emerged. Algorithmic technology, these algorithms have excellent detection effects and performance on open object detection datasets. However, deep convolutional networks are currently used for general object det...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06K9/32G06N3/04
CPCG06V20/58G06V10/25G06N3/045
Inventor 陈广陈凯瞿三清许仲聪董金虎
Owner TONGJI UNIV
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