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Insulator Detection via CNN for UAS Onboard Computers

机译:UAS机载计算机的CNN绝缘子检测

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This paper proposes the usage of single-stage CNN models for detecting insulators in aerial images and measures their applicability in low-power computing settings that often found in UAS onboard systems. In addition to methods in literature, we also design another network based on YOLOv2 modified with SPP (spatial pyramid pooling) block and CIoU loss as our baseline. Our results shows that while both using SPP block and optimizing the bounding box regression function increases the overall detection accuracy without significant cost, network architectures that is specifically designed for edge devices are much more suitable on said environments. One of such design is SF-YOLO, with computation cost of 3,842 BFLOP (29% lower than YOLOv3 tiny, 86% lower than ours) while retaining AP50 score higher than 0.9, and thus can be further used for autonomous navigation subsystems with proper edge devices.
机译:本文提出使用单级CNN模型来检测航空图像中的绝缘子,并测量其在UAS机载系统中常见的低功耗计算环境中的适用性。除了文献中的方法外,我们还设计了另一个基于YOLOv2的网络,以SPP(空间金字塔池)块和CIoU损失为基线进行修改。我们的结果表明,虽然使用SPP块和优化边界盒回归函数都可以在不产生显著成本的情况下提高整体检测精度,但专门为边缘设备设计的网络架构更适合于上述环境。这种设计之一是SF-YOLO,其计算成本为3842 BFLOP(比YOLOv3 tiny低29%,比我们的低86%),同时保持AP50得分高于0.9,因此可以进一步用于具有适当边缘设备的自主导航子系统。

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