Exploiting the Manhattan-world assumption for extrinsic self-calibration of multi-modal sensor networks

Marcel Brückner, Joachim Denzler
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Abstract

Many new applications are enabled by combining a multi-camera system with a Time-of-Flight (ToF) camera, which is able to simultaneously record intensity and depth images. Classical approaches for self-calibration of a multi-camera system fail to calibrate such a system due to the very different image modalities. In addition, the typical environments of multi-camera systems are man-made and consist primary of only low textured objects. However, at the same time they satisfy the Manhattan-world assumption. We formulate the multi-modal sensor network calibration as a Maximum a Posteriori (MAP) problem and solve it by minimizing the corresponding energy function. First we estimate two separate 3D reconstructions of the environment: one using the pan-tilt unit mounted ToF camera and one using the multi-camera system. We exploit the Manhattan-world assumption and estimate multiple initial calibration hypotheses by registering the three dominant orientations of planes. These hypotheses are used as prior knowledge of a subsequent MAP estimation aiming to align edges that are parallel to these dominant directions. To our knowledge, this is the first self-calibration approach that is able to calibrate a ToF camera with a multi-camera system. Quantitative experiments on real data demonstrate the high accuracy of our approach.
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利用曼哈顿世界假设进行多模态传感器网络的外部自定标
许多新应用都是通过将多摄像头系统与飞行时间(ToF)摄像头相结合来实现的,该摄像头能够同时记录强度和深度图像。由于图像模态的差异,传统的多相机系统自标定方法无法对多相机系统进行标定。此外,多相机系统的典型环境是人造的,主要由低纹理物体组成。然而,与此同时,它们满足了曼哈顿世界的假设。我们将多模态传感器网络的校准表述为一个极大后验问题,并通过最小化相应的能量函数来求解。首先,我们估计了环境的两个独立的3D重建:一个使用安装在ToF相机上的平移单元,另一个使用多相机系统。我们利用曼哈顿世界假设和估计多个初始校准假设通过注册三个主要方向的平面。这些假设被用作后续MAP估计的先验知识,旨在对齐平行于这些主导方向的边。据我们所知,这是第一个能够校准具有多相机系统的ToF相机的自校准方法。在实际数据上的定量实验证明了我们的方法具有较高的准确性。
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