In robotics perception, numerous tasks rely on point cloud registration. However, currently there is no method that can automatically detect misaligned point clouds reliably and without environment-specific parameters. We propose "CorAl", an alignment quality measure and alignment classifier for point cloud pairs, which facilitates the ability to introspectively assess the performance of registration. CorAl compares the joint and the separate entropy of the two point clouds. The separate entropy provides a measure of the entropy that can be expected to be inherent to the environment. The joint entropy should therefore not be substantially higher if the point clouds are properly aligned. Computing the expected entropy makes the method sensitive also to small alignment errors, which are particularly hard to detect, and applicable in a range of different environments. We found that CorAl is able to detect small alignment errors in previously unseen environments with an accuracy of 95% and achieve a substantial improvement to previous methods.
翻译:在机器人感知中,许多任务依赖于点云登记。 但是, 目前没有方法可以自动检测不匹配点云的可靠和没有环境特定参数。 我们建议对点云配对进行“ CorAl” 校准质量量度和校准分类, 这有利于对点云配对性能进行直观评估。 CorAl 比较了两个点云的组合和单独的酶。 单独的 entropy 提供了一种可预期环境所固有的倍增量的量度。 因此, 如果点云对齐的话, 联合的 entropy 不应该高得多。 计算预期的 entropy 使方法对小的校准错误也敏感, 这些错误特别难以检测, 并且适用于不同的环境。 我们发现, CorAl 能够以95%的精度探测到以前看不见环境中的小型校准差差, 并大大改进了以前的方法 。