基于实时FPGA处理的海上监视超分辨率YOLO目标检测

IF 3.4 2区 物理与天体物理 Q1 ENGINEERING, AEROSPACE
Giovanni Maria Capuano , Salvatore Capuozzo , Antonio G.M. Strollo , Nicola Petra
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引用次数: 0

摘要

从光学遥感图像中准确探测船只和及时提取信息对于民用和国防相关的广泛海上监视行动至关重要。其中包括船只跟踪、非法捕鱼、非法移民监控以及搜索和救援任务。虽然人工智能(AI)是实现卫星图像可靠和准确检测的关键组成部分,但传统的基于人工智能的遥感方法依赖于地面图像处理。这种依赖导致数据获取和产生可操作的见解之间的严重延迟,这可能会阻碍在海上灾害等关键情况下的快速决策。为了应对这一挑战,我们提出了一种基于Microchip PolarFire片上系统的新型硬件设计,用于航天器上的低功耗、实时船舶探测。我们的设计集成了基于fpga的CoreVectorBlox引擎,以加速sr -YOLOv5s的推理过程,sr -YOLOv5s是一种基于YOLOv5s的增强目标检测框架。该检测器集成了单个图像超分辨率骨干,允许提取细节和小目标的特征,从而提高检测性能。实验结果表明,SR-YOLOv5s在血管检测方面始终优于基线YOLOv5s框架。该模型在检测非常小的目标(面积≤7×7像素)时具有很高的精度,与0.2832相比,mAP50达到了0.4658,绝对提高了18.26个百分点。当部署在PolarFire FPGA上时,端到端管道维持实时运行,推理延迟为每帧55毫秒,平均动态功耗低于1.2 W。这些结果证实了我们的方法在功率受限的船上处理中的适用性,并证明了它作为一种通过对地球观测图像的基于边缘的分析来实现海上监视低延迟警报生成的解决方案的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Super-Resolution YOLO Object Detection for Maritime Surveillance with Real-Time FPGA Processing Onboard Spacecraft
Accurate vessel detection and timely information extraction from optical remote sensing imagery are essential for a wide range of maritime surveillance operations, both civilian and defense-related. These include vessel tracking, unauthorized fishing, illegal migration monitoring, and search and rescue missions. Although artificial intelligence (AI) is a key component for achieving reliable and accurate detection in satellite imagery, traditional AI-based remote sensing methodologies rely on ground-based image processing. This dependence leads to significant delays between data acquisition and the generation of actionable insights, which may hinder rapid decision-making during critical maritime situations such as sea disasters. To address this challenge, we propose a novel hardware design based on the Microchip PolarFire System-on-Chip for low-power, real-time vessel detection onboard spacecraft. Our design integrates the FPGA-based CoreVectorBlox engine to accelerate the inference process of SR-YOLOv5s—an enhanced object detection framework built upon YOLOv5s. This detector incorporates a single image super-resolution backbone that allows the extraction of fine details and features of small targets of interest, thus improving detection performance. Experimental results demonstrate that SR-YOLOv5s consistently outperforms the baseline YOLOv5s framework in vessel detection. The model provides high accuracy in detecting very small targets (area 7×7 pixels), achieving a mAP50 of 0.4658 compared to 0.2832—an absolute improvement of 18.26 percentage points. When deployed on the PolarFire FPGA, the end-to-end pipeline sustains real-time operation with an inference latency of 55 ms per frame and an average dynamic power consumption below 1.2 W. These results confirm the suitability of our approach for power-constrained onboard processing and demonstrate its effectiveness as a solution for low-latency alert generation in maritime surveillance through edge-based analysis of Earth observation imagery.
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来源期刊
Acta Astronautica
Acta Astronautica 工程技术-工程:宇航
CiteScore
7.20
自引率
22.90%
发文量
599
审稿时长
53 days
期刊介绍: Acta Astronautica is sponsored by the International Academy of Astronautics. Content is based on original contributions in all fields of basic, engineering, life and social space sciences and of space technology related to: The peaceful scientific exploration of space, Its exploitation for human welfare and progress, Conception, design, development and operation of space-borne and Earth-based systems, In addition to regular issues, the journal publishes selected proceedings of the annual International Astronautical Congress (IAC), transactions of the IAA and special issues on topics of current interest, such as microgravity, space station technology, geostationary orbits, and space economics. Other subject areas include satellite technology, space transportation and communications, space energy, power and propulsion, astrodynamics, extraterrestrial intelligence and Earth observations.
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