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A New Method of Small Target Detection Based on Neural Network

机译:基于神经网络的小目标检测新方法

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The detection and tracking of moving dim target in infrared image have been an research hotspot for many years. The target in each frame of images only occupies several pixels without any shape and structure information. Moreover, infrared small target is often submerged in complicated background with low signal-to-clutter ratio, making the detection very difficult. Different backgrounds exhibit different statistical properties, making it becomes extremely complex to detect the target. If the threshold segmentation is not reasonable, there may be more noise points in the final detection, which is unfavorable for the detection of the trajectory of the target. Single-frame target detection may not be able to obtain the desired target and cause high false alarm rate. We believe the combination of suspicious target detection spatially in each frame and temporal association for target tracking will increase reliability of tracking dim target. The detection of dim target is mainly divided into two parts, In the first part, we adopt bilateral filtering method in background suppression, after the threshold segmentation, the suspicious target in each frame are extracted, then we use LSTM(long short term memory) neural network to predict coordinates of target of the next frame. It is a brand-new method base on the movement characteristic of the target in sequence images which could respond to the changes in the relationship between past and future values of the values. Simulation results demonstrate proposed algorithm can effectively predict the trajectory of the moving small target and work efficiently and robustly with low false alarm.
机译:红外图像中移动暗目标的检测和跟踪一直是研究的热点。图像的每一帧中的目标仅占据几个像素,而没有任何形状和结构信息。而且,红外小目标通常被淹没在信号杂波率低的复杂背景中,这使得检测非常困难。不同的背景表现出不同的统计属性,因此检测目标变得极为复杂。如果阈值分割不合理,则最终检测中可能会有更多的噪声点,这不利于检测目标的轨迹。单帧目标检测可能无法获得所需目标,并导致较高的误报率。我们相信,在每帧中在空间上对可疑目标的检测以及目标跟踪的时间关联的组合将提高跟踪昏暗目标的可靠性。暗淡目标的检测主要分为两部分:第一部分,在背景抑制中采用双边滤波方法,在阈值分割后,提取每帧中的可疑目标,然后使用LSTM(长期短期记忆)神经网络预测下一帧目标的坐标。这是一种基于目标在序列图像中的运动特性的全新方法,可以响应值的过去和将来值之间的关系变化。仿真结果表明,该算法可以有效预测移动中的小目标的轨迹,有效且鲁棒地工作,误报率低。

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