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Real-Time Object Detection Using Adaptive Background Model and Margined Sign Correlation

机译:使用自适应背景模型和余量符号相关的实时目标检测

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Background subtraction is widely used in detecting moving objects; however, changing illumination conditions, color similarity, and real-time performance remain important problems. In this paper, we introduce a sequential method for adaptively estimating background components using Kalman filters, and a novel method for detecting objects using margined sign correlation (MSC). By applying MSC to our adaptive background model, the proposed system can perform object detection robustly and accurately. The proposed method is suitable for implementation on a graphics processing unit (GPU) and as such, the system realizes real-time performance efficiently. Experimental results demonstrate the performance of the proposed system.
机译:背景减法广泛用于检测运动物体。但是,不断变化的照明条件,颜色相似度和实时性能仍然是重要的问题。在本文中,我们介绍了一种使用卡尔曼滤波器自适应估计背景分量的顺序方法,以及一种使用边距符号相关(MSC)检测对象的新方法。通过将MSC应用于我们的自适应背景模型,所提出的系统可以强大而准确地执行目标检测。所提出的方法适合在图形处理单元(GPU)上实现,因此,该系统有效地实现了实时性能。实验结果证明了该系统的性能。

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