TinyIceNet:面向星载FPGA推理的低功耗SAR海冰分割方法 / TinyIceNet: Low-Power SAR Sea Ice Segmentation for On-Board FPGA Inference
1️⃣ 一句话总结
这篇论文提出了一种名为TinyIceNet的轻量化神经网络,它通过算法与硬件的协同设计,能够在卫星搭载的FPGA芯片上高效、低功耗地处理雷达图像,实现近实时的海冰分割,为极地航行安全提供及时信息。
Accurate sea ice mapping is essential for safe maritime navigation in polar regions, where rapidly changing ice conditions require timely and reliable information. While Sentinel-1 Synthetic Aperture Radar (SAR) provides high-resolution, all-weather observations of sea ice, conventional ground-based processing is limited by downlink bandwidth, latency, and energy costs associated with transmitting large volumes of raw data. On-board processing, enabled by dedicated inference chips integrated directly within the satellite payload, offers a transformative alternative by generating actionable sea ice products in orbit. In this context, we present TinyIceNet, a compact semantic segmentation network co-designed for on-board Stage of Development (SOD) mapping from dual-polarized Sentinel-1 SAR imagery under strict hardware and power constraints. Trained on the AI4Arctic dataset, TinyIceNet combines SAR-aware architectural simplifications with low-precision quantization to balance accuracy and efficiency. The model is synthesized using High-Level Synthesis and deployed on a Xilinx Zynq UltraScale+ FPGA platform, demonstrating near-real-time inference with significantly reduced energy consumption. Experimental results show that TinyIceNet achieves 75.216% F1 score on SOD segmentation while reducing energy consumption by 2x compared to full-precision GPU baselines, underscoring the potential of chip-level hardware-algorithm co-design for future spaceborne and edge AI systems.
TinyIceNet:面向星载FPGA推理的低功耗SAR海冰分割方法 / TinyIceNet: Low-Power SAR Sea Ice Segmentation for On-Board FPGA Inference
这篇论文提出了一种名为TinyIceNet的轻量化神经网络,它通过算法与硬件的协同设计,能够在卫星搭载的FPGA芯片上高效、低功耗地处理雷达图像,实现近实时的海冰分割,为极地航行安全提供及时信息。
源自 arXiv: 2603.03075