cs.AI updates on arXiv.org 10月09日 12:10
卫星遥感AI模型:原始数据处理与性能评估
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本文研究利用原始数据对卫星遥感AI模型进行对象检测和分类任务的影响,并比较了基于原始数据和预处理数据的模型性能。

arXiv:2510.06858v1 Announce Type: cross Abstract: With increasing processing power, deploying AI models for remote sensing directly onboard satellites is becoming feasible. However, new constraints arise, mainly when using raw, unprocessed sensor data instead of preprocessed ground-based products. While current solutions primarily rely on preprocessed sensor images, few approaches directly leverage raw data. This study investigates the effects of utilising raw data on deep learning models for object detection and classification tasks. We introduce a simulation workflow to generate raw-like products from high-resolution L1 imagery, enabling systemic evaluation. Two object detection models (YOLOv11s and YOLOX-S) are trained on both raw and L1 datasets, and their performance is compared using standard detection metrics and explainability tools. Results indicate that while both models perform similarly at low to medium confidence thresholds, the model trained on raw data struggles with object boundary identification at high confidence levels. It suggests that adapting AI architectures with improved contouring methods can enhance object detection on raw images, improving onboard AI for remote sensing.

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卫星遥感 AI模型 原始数据处理 性能评估 对象检测
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