Motion detection with non-stationary background

Ying Ren, C. Chua, Yeong-Khing Ho
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引用次数: 41

Abstract

This paper proposes a new method for moving object (foreground) detection with non-stationary background using background subtraction. While background subtraction has traditionally worked well for stationary backgrounds, the same cannot be implied for a nonstationary viewing sensor. To a limited extent, motion compensation for non-stationary backgrounds can be applied, but in practice, it is difficult to realize the motion compensation to sufficient accuracy and the background subtraction algorithm will fail for a moving scene. The problem is further compounded when the moving target to be detected/tracked is small, since the pixel error in motion compensating the background will subsume the small target. A spatial distribution of Gaussians (SDG) model is proposed to deal with moving object detection having motion compensation which is only approximately extracted. The distribution of each background pixel is temporally and spatially modeled; a pixel in the current frame is then classified based on this statistical model. The emphasis of this approach is on the robust detection of moving objects even with approximately accurate motion compensation, noise, or environmental changes. Test cases involving the detection of small moving objects with a highly textured background and a pan-tilt tracking system are demonstrated successfully.
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非平稳背景下的运动检测
提出了一种基于背景减法的非静止背景下运动目标(前景)检测新方法。虽然背景减法传统上对静止背景工作得很好,但对于非静止观看传感器却不能这样做。在一定程度上,运动补偿可以应用于非静止背景,但在实践中,运动补偿很难达到足够的精度,背景减去算法对于运动场景会失败。当待检测/跟踪的运动目标很小时,由于运动补偿背景的像素误差会将小目标包含进去,问题就更加复杂了。针对仅近似提取运动补偿的运动目标检测问题,提出了一种空间分布高斯(SDG)模型。对每个背景像素的分布进行时间和空间建模;然后根据该统计模型对当前帧中的像素进行分类。这种方法的重点是对运动物体的鲁棒检测,即使具有近似精确的运动补偿,噪声或环境变化。成功地演示了具有高度纹理背景的小运动物体检测和泛倾斜跟踪系统的测试用例。
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