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Variable size small targets detection using density-based clustering combined with backtracking strategy

机译:可变大小的小目标使用基于密度的聚类与回溯策略相结合检测

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The series problem of infrared small target detection in heavy clutter is a challenging work in active vision. During different imaging environments the size and gray intensity of target will keep changing which lead to unstable detection. Focus on mining more robust feature of small targets and following the sequential detection framework, we propose a novel research scheme based on density-based clustering and backtracking strategy in this paper. First, point of interest is extracted by the speeded up robust feature (SURF) detector for its better performance in digging features invariant to uniform scaling, orientation and illumination changes. Second, due to the local aggregation property of target trajectory in space, a new proposed density-based clustering method is introduced to segment the target trajectory, so that the target detection problem is transformed into the extract the target trajectory. Then, In order to keep the integral and independence of the trace as much as possible, two factors: percent and are exploited to help deciding the clustering granularity. Later, the backtracking strategy is adopted to search for the target trajectory with pruning function on the basis of the consistence and continuity of the short-time target trajectory in temporal-spatial. Extended experiments show the validity of our method. Compared with the data association methods executed on the huge candidate trajectory space, the time-consuming is reduced obviously. Additional, the feature detection is more stable for the use of SURF and the false alarm suppression rate is superior to most baseline and state-of-arts methods.
机译:在重型杂波中红外小目标检测的系列问题是一种充满活力的视觉的具有挑战性的工作。在不同的成像环境期间,目标的尺寸和灰色强度将保持变化,这导致不稳定的检测。专注于开采小目标的更强大特征,并在顺序检测框架之后,我们提出了一种基于密度的聚类和回溯策略的新型研究方案。首先,通过加速的鲁棒特征(冲浪)检测器提取兴趣点,以便在挖掘功能不变的挖掘功能,方向和照明变化方面的更好的性能。其次,由于空间中目标轨迹的局部聚合特性,引入了一种新的基于密度的聚类方法来分段为目标轨迹,从而将目标检测问题转换为提取目标轨迹。然后,为了保持轨迹的积分和独立性,两个因素:百分比,被利用,以帮助决定聚类粒度。稍后,采用回溯策略在时间空间中的短时靶轨迹的一致性和连续性的基础上搜索具有修剪函数的目标轨迹。扩展实验显示了我们方法的有效性。与在巨大的候选轨迹空间上执行的数据关联方法相比,显然减少了耗时。附加,特征检测对于使用冲浪更稳定,错误的报警抑制率优于大多数基线和最先进的方法。

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