Engineering Challenges for AI-Supported Computer Vision in Small Uncrewed Aerial Systems

Muhammed Tawfiq Chowdhury, J. Cleland-Huang
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引用次数: 2

Abstract

Computer Vision (CV) is used in a broad range of Cyber-Physical Systems such as surgical and factory floor robots and autonomous vehicles including small Unmanned Aerial Systems (sUAS). It enables machines to perceive the world by detecting and classifying objects of interest, reconstructing 3D scenes, estimating motion, and maneuvering around objects. CV algorithms are developed using diverse machine learning and deep learning frameworks, which are often deployed on limited resource edge devices. As sUAS rely upon an accurate and timely perception of their environment to perform critical tasks, problems related to CV can create hazardous conditions leading to crashes or mission failure. In this paper, we perform a systematic literature review (SLR) of CV-related challenges associated with CV, hardware, and software engineering. We then group the reported challenges into five categories and fourteen sub-challenges and present existing solutions. As current literature focuses primarily on CV and hardware challenges, we close by discussing implications for Software Engineering, drawing examples from a CV-enhanced multi-sUAS system.
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小型无人机系统中人工智能支持计算机视觉的工程挑战
计算机视觉(CV)广泛应用于各种网络物理系统,如外科手术和工厂车间机器人以及包括小型无人机系统(sUAS)在内的自动驾驶车辆。它使机器能够通过检测和分类感兴趣的物体、重建3D场景、估计运动和在物体周围移动来感知世界。CV算法是使用各种机器学习和深度学习框架开发的,这些框架通常部署在资源有限的边缘设备上。由于sUAS依赖于对环境的准确和及时的感知来执行关键任务,与CV相关的问题可能会造成危险条件,导致坠机或任务失败。在本文中,我们对CV、硬件和软件工程相关的CV相关挑战进行了系统的文献综述(SLR)。然后,我们将报告的挑战分为五类和十四个子挑战,并提出现有的解决方案。由于目前的文献主要关注CV和硬件挑战,我们通过讨论软件工程的影响来结束,并从CV增强的多suas系统中提取示例。
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