论文标题

学习摄像机错误校准检测

Learning Camera Miscalibration Detection

论文作者

Cramariuc, Andrei, Petrov, Aleksandar, Suri, Rohit, Mittal, Mayank, Siegwart, Roland, Cadena, Cesar

论文摘要

自我诊断和自我修复是为长期现实世界应用部署机器人平台的一些关键挑战。机器人可能出现的问题之一是由于衰老,环境瞬变或外部干扰而导致其传感器进行误解。由于需要准确感知世界,因此精确的校准位于各种应用的核心。但是,尽管许多工作重点是校准传感器,但在识别何时需要重新校准的传感器方面并没有做太多工作。本文重点介绍了一种数据驱动的方法,以了解视觉传感器(特别是RGB摄像机)中错误校准的检测。我们的贡献包括针对RGB摄像机的拟议错误校准度量,以及基于此度量的新型半合成数据集生成管道。此外,通过训练深层卷积神经网络,我们证明了管道的有效性,以确定是否需要对摄像机内在参数进行重新校准。该代码可在http://github.com/ethz-asl/camera_miscalib_detection上找到。

Self-diagnosis and self-repair are some of the key challenges in deploying robotic platforms for long-term real-world applications. One of the issues that can occur to a robot is miscalibration of its sensors due to aging, environmental transients, or external disturbances. Precise calibration lies at the core of a variety of applications, due to the need to accurately perceive the world. However, while a lot of work has focused on calibrating the sensors, not much has been done towards identifying when a sensor needs to be recalibrated. This paper focuses on a data-driven approach to learn the detection of miscalibration in vision sensors, specifically RGB cameras. Our contributions include a proposed miscalibration metric for RGB cameras and a novel semi-synthetic dataset generation pipeline based on this metric. Additionally, by training a deep convolutional neural network, we demonstrate the effectiveness of our pipeline to identify whether a recalibration of the camera's intrinsic parameters is required or not. The code is available at http://github.com/ethz-asl/camera_miscalib_detection.

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