Establishing object correspondence across non-overlapping calibrated cameras

Dileepa Joseph Jayamanne, R. Rodrigo
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Abstract

When establishing object correspondence across non-overlapping cameras, the existing methods combine separate likelihoods of appearance and kinematic features in a Bayesian framework, constructing a joint likelihood to compute the probability of re-detection. A drawback of these methods is not having a proper approach to reduce the search space when localizing an object in a subsequent camera once the kinematic and appearance features are extracted in the current camera. In this work we introduce a novel methodology to condition the location of an object on its appearance and time, without assuming independence between appearance and kinematic features, in contrast to existing work. We characterize the linear movement of objects in the unobserved region with an additive Gaussian noise model. Assuming that the cameras are affine, we transform the noise model onto the image plane of subsequent cameras. We have tested our method with toy car experiments and real-world camera setups and found that the proposed noise model acts as a prior to improving re-detection. It constrains the search space in a subsequent camera, greatly improving the computational efficiency. Our method also has the potential to distinguish between objects similar in appearance, and recover correct labels when they move across cameras.
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在非重叠校准相机之间建立目标对应关系
在建立非重叠相机之间的目标对应关系时,现有方法将外观特征和运动特征的独立似然结合在贝叶斯框架中,构建联合似然来计算重新检测的概率。这些方法的一个缺点是,一旦在当前相机中提取了运动和外观特征,在后续相机中定位物体时,没有适当的方法来减少搜索空间。在这项工作中,我们引入了一种新的方法来限制物体的外观和时间的位置,而不假设外观和运动学特征之间的独立性,与现有的工作相反。我们用加性高斯噪声模型来描述未观测区域中物体的线性运动。假设相机是仿射的,我们将噪声模型转换到后续相机的图像平面上。我们已经用玩具车实验和真实世界的相机设置测试了我们的方法,发现所提出的噪声模型可以作为改进重新检测的先验条件。它限制了后续摄像机的搜索空间,大大提高了计算效率。我们的方法还具有区分外观相似的物体的潜力,并在它们在相机之间移动时恢复正确的标签。
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