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Adaptive scale image sequence target tracking method based on feature filtering and fast motion detection template prediction

A fast-moving, target-tracking technology, applied in image enhancement, image analysis, image data processing, etc., can solve the problems of difficult to detect features and poor tracking performance of long-distance small targets, achieve accurate adaptive window fusion, and improve robustness , the effect of improving performance

Inactive Publication Date: 2016-02-24
ZHEJIANG UNIV OF TECH
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Problems solved by technology

[0005] In order to overcome the shortcomings of the existing target tracking methods, which are difficult to detect features and have poor tracking performance for long-distance small targets in complex backgrounds, the present invention provides a tracking method that is effective for long-distance small targets in complex backgrounds and has relatively low tracking performance. A Good Image Sequence Object Tracking Method Based on Feature Filtering and Fast Motion Detection Template Prediction

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  • Adaptive scale image sequence target tracking method based on feature filtering and fast motion detection template prediction
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  • Adaptive scale image sequence target tracking method based on feature filtering and fast motion detection template prediction

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[0021] The present invention will be further described below in conjunction with the drawings.

[0022] Reference Figure 1 ~ Figure 4 , An adaptive scale image sequence target tracking method based on feature filtering and fast motion detection template prediction, including the following steps:

[0023] 1) Obtain images from a camera or image sequence, manually specify the initial frame or use other methods to obtain the designation of the object to be tracked. The object is converted to the frequency domain through a fast Fourier transform based on the Gaussian kernel to construct a characteristic filter.

[0024] 2) Construct a fast motion prediction template for fast motion prediction of moving targets.

[0025] 3) Construct an object imaging scale change model to predict the target scale change during the target tracking process.

[0026] 4) In the subsequent second frame, the estimated position of the object is obtained from the fast motion prediction template, with the estimat...

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Abstract

The present invention provides an adaptive scale image sequence target tracking method based on feature filtering and fast motion detection template prediction. The method comprises the following steps of: 1, specifying a to-be-tracked object in an initial frame, transforming the object into a frequency domain by fast Fourier transformation based on a Gaussian kernel, and constructing a feature filter; 2, constructing a fast motion prediction template; 3, constructing an object imaging scale change model; 4, in a second frame, acquiring a predicted position of the object by the fast motion prediction template, acquiring a position of a corresponding matched search box according to the object imaging scale change model by using the predicted position as the center, performing filteration by the feature filter, regarding a position of a maximum response value as an object location, and simultaneously, generating a new feature filter and using the new feature filter as a to-be-used feature filter in a next frame; 5, sequentially repeating the step 4 in subsequent frames until a video or image sequence is finished. The method provided by the present invention is effectively applicable to tracking of a distant and small object in a complicated background and has good tracking performance.

Description

Technical field [0001] The invention relates to the field of video target tracking, in particular to an image sequence target tracking method. Background technique [0002] The camera always keeps track of the target during the process of quickly approaching the target in the long-distance and high-speed motion state, which is one of various target tracking application scenarios. In a long-distance scenario, the image size of the target object on the sensor is very small, often less than 15×15 pixels, or even only 5×5 pixels. However, at such a scale, the characteristics of the imaging area are extremely inconspicuous, which is not conducive to the use of object color, texture, structure and other characteristics for tracking. In a natural scene, the background of the target object is very complicated and random, and the foreground may be blocked. Existing tracking algorithms cannot complete the tracking task well in such application scenarios. The algorithm can track the targ...

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Application Information

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IPC IPC(8): G06T7/20
CPCG06T2207/10G06T2207/20004G06T2207/20024G06T2207/20056
Inventor 陈胜勇高强邹祎杰张剑华刘盛谢臻
Owner ZHEJIANG UNIV OF TECH
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