A method for amplifying image data

A technology of image data and image samples, which is applied in the field of data amplification, can solve problems such as sample imbalance and overfitting, and achieve the effects of speeding up the establishment, reducing the number, and improving the accuracy rate

Pending Publication Date: 2019-03-29
ZHEJIANG NORMAL UNIVERSITY
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  • Claims
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AI Technical Summary

Problems solved by technology

[0008] The purpose of the present invention is to use the existing few-sample images to generate new image data, increase the amount of small-sample image data, solve the over-fitting problem caused by sample imbalance, reduce the influence of noise features on the model, and improve the generality of the model. and reduce the amount of image data collected in the early stage, reduce the workload of image preprocessing such as labeling, and speed up the establishment of training sets

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Embodiment Construction

[0035] The purpose, technical solutions and advantages of the present invention will be described in detail below through specific embodiments and accompanying drawings.

[0036] figure 1 Shown is a schematic diagram of the entire process of the embodiment of the application, and the specific implementation is as follows:

[0037] Step S110, determine the category to be augmented, and select sample images containing this category from the data set.

[0038] Step S120, using labeling software to mark the category to obtain a marked frame, segment the marked frame from the image and obtain information about the category in the image.

[0039] Step S130, determine the target area and the noise interference area in the information of the category, the target area is the area containing the main features of the category, and the noise interference area is the area containing the background features and other interference factor features.

[0040] Step S140, change the pixel value...

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Abstract

A method for amplifying image data is disclosed. Aiming at the problem of imbalance of target detection samples in depth learning, the over-fitting phenomenon caused by the problem is avoided by increasing the amount of data of fewer samples (the category with fewer samples), and the generalization ability of the model after training is improved, at the same time, the amount of image data acquisition and the workload of pre-processing can be reduced. The method comprises the following steps of: determining a category of a desired amplified image; extracting a category mark frame in the image through a labeling software; determining a target area and a noise interference area; changing pixel values of the noise interference area; and generating a new sample. By using this method, new samples can be generated from the existing samples, and the disturbance of noise features to the model can be reduced while the target features are highlighted. Moreover, the generated new samples do not need to be pre-processed again, so the detection model can be trained directly.

Description

technical field [0001] The present invention relates to data augmentation technology, in particular to an image data augmentation method based on deep learning target detection. Background technique [0002] In terms of target detection, deep learning has faster detection speed and higher accuracy than traditional methods. At the same time, deep learning does not need complex feature engineering, just transfer the data set to the network directly. Therefore, deep learning is very dependent on data samples. The larger the amount of data, the better the performance of the model trained by deep learning. How to obtain a large amount of sample data is also one of the focuses of deep learning. [0003] It is inevitable that the collection of sample data is quite cumbersome and requires a lot of time, manpower and material resources. At the same time, the unbalanced number of samples collected in each category will also lead to the problem of over-fitting of the model, which requi...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T5/00
CPCG06T5/002G06T2207/20081
Inventor 熊继平叶灵枫叶童
Owner ZHEJIANG NORMAL UNIVERSITY
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