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Robust object tracking via class aware Partial Least Squares-Gabor Wavelet Subspace

机译:通过类别意识到的偏光波对象跟踪鲁棒对象跟踪 - Gabor小波子空间

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Effective tracking is still a big challenge due to lack of robust descriptors which captures discriminative features in non-controlled environment. We propose a novel descriptor based on Gabor wavelet and Partial Least Squares (PLS) discriminant analysis. Multi scale and multi orientation Gabor wavelets can extract selective local frequencies effectively in spatial and frequency domain. Due to the large dimension of feature vectors, dimensionality reduction is done using class aware PLS analysis. Unlike unsupervised Principal Component Analysis (PCA), PLS based subspace model learns target effectively by explicitly knowing the class labels of target and background region feature vectors. Tracking is done using particle filter and similarity between target and candidates is measured using low dimensional subspace model. To combat the target changes during tracking, novel static and dynamic target as well as background update strategy is used. Experimental results of various dataset demonstrate that the proposed tracker improves robustness and accuracy against representative trackers.
机译:由于缺乏稳健的描述符缺乏捕获非受控环境中的鉴别特征,有效跟踪仍然是一个很大挑战。我们提出了一种基于Gabor小波和局部最小二乘(PLS)判别分析的新颖描述。多尺度和多向方向Gabor小波可以在空间和频域中有效地提取选择性局部频率。由于特征向量的大维度,使用类别感知PLS分析完成维度减少。与无监督的主成分分析(PCA)不同,基于PLS的子空间模型通过显式了解目标和背景区域特征向量的类标签来有效地学习目标。使用低维子空间模型测量跟踪使用粒子滤波器和候选之间的相似性完成。在跟踪期间打击目标变化,使用新颖的静态和动态目标以及背景更新策略。各个数据集的实验结果表明,所提出的跟踪器提高了对代表性跟踪器的鲁棒性和准确性。

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