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Robust scale invariant target detection using the scale-space theory and optimization for IRST

机译:基于尺度空间理论的鲁棒尺度不变目标检测与IRST优化

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摘要

This paper presents a new small target detection method using scale invariant feature. Detecting small targets whose sizes are varying is very important to automatic target detection in infrared search and track (IRST). The conventional spatial filtering methods with fixed sized kernel show limited target detection performance for incoming targets. The scale invariant target detection can be defined as searching for maxima in the 3D (x, y, and scale) representation of an image with the Laplacian function. The scale invariant feature can detect different sizes of targets robustly. Experimental results with real FLIR images show higher detection rate and lower false alarm rate than conventional methods. Furthermore, the proposed method shows very low false alarms in scan-based IR images than conventional niters.
机译:本文提出了一种新的利用尺度不变特征的小目标检测方法。检测大小变化的小目标对于红外搜索和跟踪(IRST)中的自动目标检测非常重要。具有固定大小内核的常规空间滤波方法对传入目标显示出有限的目标检测性能。尺度不变目标检测可以定义为使用拉普拉斯函数在图像的3D(x,y和尺度)表示中搜索最大值。尺度不变特征可以稳健地检测不同大小的目标。真实FLIR图像的实验结果显示,与传统方法相比,其检测率更高,误报率更低。此外,所提出的方法在基于扫描的红外图像中显示出的误报率低于传统的扫描器。

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