Abstract

The surround-view module is an indispensable component of a modern advanced driving assistance system. By calibrating the intrinsics and extrinsics of the surround-view cameras accurately, a top-down surround-view can be generated from raw fisheye images. However, poses of these cameras sometimes may change. At present, how to correct poses of cameras in a surround-view system online without re-calibration is still an open issue. To settle this problem, we introduce the sparse direct framework and propose a novel optimization scheme of a cascade structure. This scheme is actually composed of two levels of optimization and two corresponding photometric error based models are proposed. The model for the first-level optimization is called the ground model, as its photometric errors are measured on the ground plane. For the second level of the optimization, it’s based on the so-called ground-camera model, in which photometric errors are computed on the imaging planes. With these models, the pose correction task is formulated as a nonlinear least-squares problem to minimize photometric errors in overlapping regions of adjacent bird’s-eye-view images. With a cascade structure of these two levels of optimization, an appropriate balance between the speed and the accuracy can be achieved. Experiments show that our method can effectively eliminate the misalignment caused by cameras’ moderate pose changes in the surround-view system. Source code and test cases are available online at https://cslinzhang.github.io/CamPoseCorrection/ .

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