Few-sample target detection method based on meta-feature and weight adjustment and network model

A technology of weight adjustment and target detection, which is applied in biological neural network models, neural learning methods, character and pattern recognition, etc., can solve problems such as difficult acquisition, poor generalization ability of overfitting, and less data, so as to improve target detection The effect of accuracy

Pending Publication Date: 2021-02-12
长沙军民先进技术研究有限公司
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Problems solved by technology

In terms of speed and accuracy, the two detection methods have their own advantages. Generally speaking, the detection accuracy of two-stage target detection is higher than that of single-stage target detection. The speed is better than the two-stage target detection, but the target detection task in the two detection methods is heavily dependent on a large number of labeled data sets for training, but in practical applications, some objects have little data or are difficult to detect. Obtain
When there is a lack of labeled data, severe overfitting and very poor generalization capabilities will occur, resulting in low detection accuracy or no detection at all.

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  • Few-sample target detection method based on meta-feature and weight adjustment and network model
  • Few-sample target detection method based on meta-feature and weight adjustment and network model
  • Few-sample target detection method based on meta-feature and weight adjustment and network model

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Embodiment Construction

[0041] In order to enable those skilled in the art to better understand the technical solutions of the present invention, the present invention will be further described in detail below in conjunction with the accompanying drawings.

[0042] Such as Figure 1-Figure 6 As shown, a few-shot target detection method based on meta-features and weight adjustment, the method includes the following steps:

[0043] S1. Build a detection network model and preprocess the input base class training images, new class training images and test images;

[0044] S2. Convolving the preprocessed base class training image into the meta-feature extraction module and the weight adjustment module in the detection network model to extract the corresponding meta-feature map and weight vector;

[0045] S3. Combine the meta feature maps and weight vectors extracted by respective convolutions to obtain the corresponding multidimensional feature maps, and then input the obtained multidimensional feature m...

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Abstract

The invention discloses a few-sample target detection method based on meta-feature and weight adjustment and a network model. The method comprises the following steps: S1, constructing a detection network model and preprocessing an image; s2, extracting meta-features and weight vectors of the base class images; s3, combining the extracted meta-features and weight vectors to obtain a multi-dimensional feature map, and inputting the multi-dimensional feature map into a classification regression module to calculate a loss function; s4, adjusting network parameters according to the loss function and the gradient descent, and realizing training of a detection network model by the base class image; s5, extracting meta-features and weight vectors of the base class and new class joint images; s6,repeating the step S3 and the step S4, and training of the new class and base class combined image on the detection network model is completed; and S7, detecting the test image by using the trained detection network model. According to training of the detection network model, meta-features are extracted by using samples of a large amount of data, and fine adjustment is performed by means of few sample data, so that the target detection accuracy of a small amount of marked samples is improved.

Description

technical field [0001] The invention belongs to the technical field of computer vision detection, and mainly relates to deep learning target detection. Specifically, it proposes a few-sample target detection method and network model based on meta-features and weight adjustments, which can be used to realize target detection with only a small number of samples. Classify and locate. Background technique [0002] At present, the target detection task in the field of computer vision has been widely used in the fields of industrial production and intelligent monitoring. Target detection is extended from image classification, which mainly includes identifying the target contained in the image and marking the position of the target. In the past, due to the limitations of computer processing speed and memory, researchers generally used traditional non-convolutional neural network detection methods to detect targets, but with the rapid development of computer processing speed and me...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62G06N3/04G06N3/08G06T7/73
CPCG06N3/084G06T7/73G06T2207/20081G06T2207/20084G06V2201/07G06N3/045G06F18/214G06F18/2415
Inventor 夏利锋王绍丽肖和龙邓建猛黄俊李凌荣蒋晓鹏刘文灿雷一鸣
Owner 长沙军民先进技术研究有限公司
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