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Robust infrared target tracking using discriminative and generative approaches
Institution:1. Academy of Scientific and Innovative Research (AcSIR), New Delhi 110001, India;2. Computational Instrumentation, Central Scientific Instruments Organisation (CSIR-CSIO), Chandigarh 160030, India;3. Department of Computer Science and Engineering, Chitkara University, Himachal Pradesh, India
Abstract:The process of designing an efficient tracker for thermal infrared imagery is one of the most challenging tasks in computer vision. Although a lot of advancement has been achieved in RGB videos over the decades, textureless and colorless properties of objects in thermal imagery pose hard constraints in the design of an efficient tracker. Tracking of an object using a single feature or a technique often fails to achieve greater accuracy. Here, we propose an effective method to track an object in infrared imagery based on a combination of discriminative and generative approaches. The discriminative technique makes use of two complementary methods such as kernelized correlation filter with spatial feature and AdaBoost classifier with pixel intesity features to operate in parallel. After obtaining optimized locations through discriminative approaches, the generative technique is applied to determine the best target location using a linear search method. Unlike the baseline algorithms, the proposed method estimates the scale of the target by Lucas-Kanade homography estimation. To evaluate the proposed method, extensive experiments are conducted on 17 challenging infrared image sequences obtained from LTIR dataset and a significant improvement of mean distance precision and mean overlap precision is accomplished as compared with the existing trackers. Further, a quantitative and qualitative assessment of the proposed approach with the state-of-the-art trackers is illustrated to clearly demonstrate an overall increase in performance.
Keywords:Correlation filter  Channel coded feature maps  Multi frame template  Adaboost classifier  LK scale estimation
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