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Target-surround feature attention model of visual tracking

机译:目标环绕作用视觉跟踪模型

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This paper presents a target-surround feature attention (TSFA) model for constructing attention-based visual tracking algorithm. This model extracts attentive region by distinguishing the color contrast between the interested target and its surround. A preference generator provides online feature transformation to update the target/surround biasing masks that describes the color composition associated with the target and its surround. Output of the TSFA model is a saliency map representing occurrence possibility of the target. Tracker based on the mean shift algorithm is used to lock and locate the target on the saliency map. Experimental results show that visual tacking algorithm with the TSFA model may adapt to noisy images under changing illumination.
机译:本文介绍了用于构建基于关注的视觉跟踪算法的目标 - 围绕特征注意力(TSFA)模型。 该模型通过区分感兴趣的目标与其环绕之间的颜色对比提取周到的区域。 偏好发生器提供在线功能转换,以更新描述与目标相关的颜色组成及其环绕声的目标/环绕偏置掩模。 TSFA模型的输出是表示目标可能性的显着图。 基于平均移位算法的跟踪器用于锁定和定位显着图的目标。 实验结果表明,随着TSFA模型的视觉粘接算法可能在改变照明下适应嘈杂的图像。

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