Autonomous vehicles and robots require increasingly more robustness and reliability to meet the demands of modern tasks. These requirements specially apply to cameras onboard such vehicles because they are the predominant sensors to acquire information about the environment and support actions. Cameras must maintain proper functionality and take automatic countermeasures if necessary. However, few works examine the practical use of a general condition monitoring approach for cameras and designs countermeasures in the context of an envisaged high-level application. We propose a generic and interpretable self-health-maintenance framework for cameras based on data- and physically-grounded models. To this end, we determine two reliable, real-time capable estimators for typical image effects of a camera in poor condition (blur, noise phenomena and most common combinations) by comparing traditional and retrained machine learning-based approaches in extensive experiments. Furthermore, we demonstrate on a real-world ground vehicle how one can adjust the camera parameters to achieve optimal whole-system capability based on experimental (non-linear and non-monotonic) input-output performance curves, using object detection, motion blur and sensor noise as examples. Our framework not only provides a practical ready-to-use solution to evaluate and maintain the health of cameras, but can also serve as a basis for extensions to tackle more sophisticated problems that combine additional data sources (e.g., sensor or environment parameters) empirically in order to attain fully reliable and robust machines.
翻译:自主车辆和机器人需要越来越强的稳健性和可靠性,以满足现代任务的需求。这些要求特别适用于这些车辆上的相机,因为它们是获取环境信息和支持行动的主要传感器。相机必须保持适当的功能,必要时采取自动对策。然而,很少有工作审查对相机实际使用一般状况监测方法的情况,并在设想的高水平应用范围内设计反措施。我们提议基于数据和物理基底模型的相机通用和可解释的自我健康维护框架。为此,我们确定两个可靠、实时、有能力的测算器,用于在广泛试验中比较传统和经过再培训的机器学习方法的典型图像效果(布拉尔、噪音现象和最常见的组合)。此外,我们在现实地面飞行器上展示如何调整相机参数,以便在实验性(非线性和非线性)输入式输入-输出性性工作曲线的基础上实现最佳的全系统能力。我们通过物体探测、移动模糊性和感应感应器作为例子,我们的框架不仅提供实用的、精密的机能化的模型,而且能化的系统化的系统化环境,还可以作为更可靠的系统化的系统化的模型。