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首页> 外文期刊>Journal of Real-Time Image Processing >Fast background subtraction with adaptive block learning using expectation value suitable for real-time moving object detection
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Fast background subtraction with adaptive block learning using expectation value suitable for real-time moving object detection

机译:使用适用于实时移动对象检测的期望值的自适应块学习快速背景减法

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摘要

This paper presents a method of moving object detection through a fast background subtraction technique suitable for real-time performance in wide range of platforms. An intermittent background update using adaptive blocks individually calculates the learning rate through expected difference values. Then, coupled with a fast background subtraction process, the design achieves fast throughput with well-rounded performance. To compensate for the lagging effects of intermittent background update, an adaptation bias is devised to improve precision and recall metrics. Experiments show a versatile performance in varying scenes with overall results better than conventional techniques. The proposed method achieved a fast execution speed of up to 56 fps in PC using Full HD video. It also achieved 655 fps and 83 fps in PC and ARM core-embedded platform, respectively, using the minimum input resolution of 320 x 240. Overall, it is suitable for real-time performance applications.
机译:本文介绍了一种通过适用于广泛平台的实时性能的快速背景减法技术移动物体检测方法。 使用自适应块的间歇背景更新通过预期的差值单独计算学习速率。 然后,与快速背景减法过程相结合,该设计实现了具有圆圆形性能的快速吞吐量。 为了补偿间歇背景更新的滞后效果,设计了一种适应偏差以改善精度和召回度量。 实验在不同的场景中表现出多功能性能,总结果比传统技术更好。 所提出的方法在PC中实现了高达56 FPS的快速执行速度,使用全高清视频。 它还分别在PC和ARM核心嵌入式平台中实现了655 FPS和83 FPS,使用320 x 240的最小输入分辨率。总体而言,它适用于实时性能应用。

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