Abstract

Marine object tracking is critical for search and rescue activities in the complex marine environment. However, the complex marine environment poses a huge challenge to the effect of tracking, such as the variability of light, the impact of sea waves, the occlusion of other ships, etc. Under these complex marine environmental factors, how to design an efficient dynamic visual tracker to make the results accurate, real time and robust is particularly important. The parallel three-branch correlation filters for complex marine environmental object tracking based on a confidence mechanism is proposed by us. The proposed tracker first detects the appearance change and position change of the object by constructing parallel three-branch correlation filters, which enhances the robustness of the correlation filter model. Through the weighted fusion of response maps, the center position of the object is accurately located. Secondly, the Gaussian-triangle joint distribution is used to replace the original Gaussian distribution in the training phase. Finally, a verification mechanism of confidence metric is embedded in the filter update section to analyze the tracking effect of the current frame, and to update the filter sample from verification result. Thus, a more accurate correlation filter is trained to prevent model drift and achieve a good tracking effect. We found that the effect of various interferences on the filter is effectively reduced by comparing with other trackers. The experiments prove that the proposed tracker can play an outstanding role in the complex marine environment.

Highlights

  • Due to the complexity of the marine environment, it is meaningful to study the tracking of complex marine environmental objects [1]

  • Aiming at the problem that parallel three-branch correlation filters lack effective supervision mechanism, this paper proposes a confidence mechanism to analyze the distribution of related responses to verify whether it is reliable [13], and supervise the update of the sample model with inspection results

  • Aiming at the problem that the method of parallel three-branch correlation filters lacks effective supervision mechanism, this paper proposes a verification mechanism [22] to analyze the reliability of current results by evaluating the distribution of related responses, and supervise the update of the sample model based on the inspection results

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Summary

Introduction

Due to the complexity of the marine environment, it is meaningful to study the tracking of complex marine environmental objects [1]. As to promote the precision of tracking performance in the complex marine environment, we put forward parallel three-branch correlation filters for tracking the object, which can efficiently improve the robustness of object tracking [12]. Aiming at the problem that parallel three-branch correlation filters lack effective supervision mechanism, this paper proposes a confidence mechanism to analyze the distribution of related responses to verify whether it is reliable [13], and supervise the update of the sample model with inspection results. Three different learning rates are used to renew the model and perform weighted fusion to effectively improve the robustness of the tracker to overcome bad conditions in the marine environment. We compared nine other representative trackers on the OTB-2015 dataset, showing that the proposed tracker can deal with object tracking efficiently in complex and changing scenarios

Related Work
Parallel Three-Branch Correlation Filters
Confidence Machanism
Algorithm of the Proposed Tracker
3: Position detection: 4
12: Model update: 13
Experimental Results and Analysis in the Complex Marine Environment
Comparison of the Proposed Tracker and the Baseline Tracker on OTB-2013
Results and Analysis onDataset the Dataset
Failure Case
Conclusions
Full Text
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