Scale adaptive target-tracking method based on depth characteristic kernel correlation filter

A scale-adaptive and target-tracking technology, applied in the field of computer vision, can solve problems such as tracking algorithm drift, tracking algorithm drift, and inability to estimate target scale changes.

Inactive Publication Date: 2017-09-12
NANJING UNIV OF SCI & TECH
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Problems solved by technology

However, the kernel correlation filter algorithm uses the traditional gradient orientation histogram feature, and the tracking algorithm is prone to drift when the appearance representation of the target changes; in addit...

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  • Scale adaptive target-tracking method based on depth characteristic kernel correlation filter
  • Scale adaptive target-tracking method based on depth characteristic kernel correlation filter
  • Scale adaptive target-tracking method based on depth characteristic kernel correlation filter

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Embodiment 1

[0110] The present invention is based on the scale adaptive target tracking method of the deep feature kernel correlation filter, the method is mainly divided into four steps, the first step is to extract the depth convolution feature; the second step is to train the kernel correlation filter; the third step is to estimate the target at The position and scale of the current frame; the fourth step is to adopt an adaptive high-confidence model update strategy.

[0111] Step 1, input the initial position p of the target 0 and scale s 0 , set the window size to 2.0 times the initial bounding box of the target;

[0112] Step 2, according to the target position p of frame t-1 t-1 , get the target area x t-1 , the size is the window size;

[0113] Step 3, extract the target area x t-1 The depth convolution feature, fast Fourier transform, get the feature map Wherein ^ represents the discrete Fourier transform;

[0114] Step 4, according to the feature map Computing Kernel A...

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Abstract

The invention discloses a scale adaptive target-tracking method based on a depth characteristic kernel correlation filter. The method comprises the following steps: inputting an image into a pre-trained convolution neural network, and extracting depth convolution features; tracking a target, and estimating the position and scale of the target through the trained model; training the kernel correlation filter according to the currently detected target position and scale; and updating the kernel correlation filter through employing an adaptive high-confidence model updating method. According to the invention, the depth convolution features are extracted, and the adaptive scale estimation method and the adaptive high-confidence model updating strategy are improved, thereby improving the target tracking robustness under the conditions of complex scenes and appearance changes. The method can achieve the high-efficiency and accurate processing of the scale change of the target. In addition, the adaptive high-confidence model updating strategy is employed, so the model tracking drift is reduced as much as possible.

Description

technical field [0001] The invention relates to the technical field of computer vision, in particular to a scale-adaptive target tracking method based on a deep feature kernel correlation filter. Background technique [0002] In recent years, with the emergence of large-scale labeled data sets and the improvement of computer computing power, deep learning methods, especially convolutional neural networks, have been successfully applied to computer vision fields such as image classification, target detection, target recognition, and semantic segmentation. Thanks to the powerful object representation ability of convolutional neural network. Different from traditional image features, deep convolutional features are learned from a large number of thousands of categories of image data, so high-level convolutional features represent the semantic features of the target and are suitable for image classification problems. Due to the low resolution of high-level convolutional feature...

Claims

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Application Information

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IPC IPC(8): G06T3/40G06T7/246G06T7/269G06T7/44G06N3/08
CPCG06N3/08G06T3/4084G06T7/246G06T7/269G06T7/44G06T2207/20016G06T2207/20081
Inventor 刘忠耿练智超濮柯佳李杨张伟李敏
Owner NANJING UNIV OF SCI & TECH
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