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Infrared Small Target Detection in Image Sequences Based on Temporal Low-rank and Sparse Decomposition

机译:基于时间低级和稀疏分解的图像序列中的红外小目标检测

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In infrared small target detection tasks, targets usually occupy very few pixels and present as local bright spots, lacking prior knowledge such as shape and speed. In response to the above problems, a temporal low-rank and sparse decomposition and spatio-temporal continuity detection algorithm, names as TLRSD-STC, is proposed to detect small targets and eliminate false alarm targets. The proposed algorithm firstly expands the sequence images in time domain. The preliminary separation of small targets and background is achieved through low-rank and sparse decomposition, and target prediction maps can be obtained. Subsequently, targets and noise are further separated by an improved pipeline filter to obtain the final detection image. The proposed algorithm is validated on three sequence images containing complex scenes. Experimental results demonstrate that the algorithm has a higher detection rate and lower false alarm rate than other algorithms in complex scenes.
机译:在红外线小目标检测任务中,目标通常占据很少的像素并作为局部亮点,缺乏诸如形状和速度的先验知识。 响应于上述问题,提出了时间低级和稀疏分解和时空名称作为TLRSD-STC的名称,以检测小目标并消除误报目标。 所提出的算法首先在时域中扩展序列图像。 通过低级别和稀疏分解来实现小目标和背景的初步分离,并且可以获得目标预测图。 随后,通过改进的流水线滤波器进一步分离目标和噪声以获得最终检测图像。 在包含复杂场景的三个序列图像上验证了所提出的算法。 实验结果表明,该算法具有比复杂场景中的其他算法更高的检测率和较低的误报率。

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