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Neural Background Subtraction for Pan-Tilt-Zoom Cameras

机译:俯仰变焦相机的神经本底扣除

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摘要

We propose an extension of a neural-based background subtraction approach to moving object detection to the case of image sequences taken from pan-tilt-zoom (PTZ) cameras. The background model automatically adapts in a self-organizing way to changes in the scene background. Background variations arising in a usual stationary camera setting, such as those due to gradual illumination changes, to waving trees, or to shadows cast by moving objects, are accurately handled by the neural self-organizing background model originally proposed for this type of setting. Handling of variations due to the PTZ camera movement is ensured by a novel registration mechanism that allows the neural background model to automatically compensate the eventual ego-motion, estimated at each time instant. Experimental results on several real image sequences and comparisons with seven state-of-the-art methods demonstrate the accuracy of the proposed approach.
机译:我们提出了一种基于神经网络的背景减法方法的扩展,以将运动对象检测扩展到从平移-倾斜-缩放(PTZ)相机拍摄的图像序列的情况。背景模型以自组织方式自动适应场景背景的变化。通常由固定的摄影机设置引起的背景变化(例如由于逐渐的光照变化,挥舞的树木或移动物体投射的阴影所引起的背景变化)可以通过最初为这种类型的设置提出的神经自组织背景模型来准确处理。新型配准机制确保了对因PTZ摄像机运动而引起的变化的处理,该配准机制使神经本底模型能够自动补偿每次时刻估计的最终自我运动。在几个真实图像序列上的实验结果以及与七个最新方法的比较证明了该方法的准确性。

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