CVAILGApr 11, 2023

A Billion-scale Foundation Model for Remote Sensing Images

arXiv:2304.05215v4115 citationsh-index: 12
Originality Incremental advance
AI Analysis

This work addresses the need for larger models in remote sensing, a domain-specific field, by demonstrating performance gains with scaling, though it is incremental in focusing on parameter size rather than new paradigms.

The paper tackles the understudied effect of scaling model parameters in remote sensing foundation models, finding that increasing parameters from 86M to 2.4B consistently improves performance and data efficiency across tasks like rotated object detection and semantic segmentation, achieving state-of-the-art results on datasets such as DIOR-R, Potsdam, and LoveDA.

As the potential of foundation models in visual tasks has garnered significant attention, pretraining these models before downstream tasks has become a crucial step. The three key factors in pretraining foundation models are the pretraining method, the size of the pretraining dataset, and the number of model parameters. Recently, research in the remote sensing field has focused primarily on the pretraining method and the size of the dataset, with limited emphasis on the number of model parameters. This paper addresses this gap by examining the effect of increasing the number of model parameters on the performance of foundation models in downstream tasks such as rotated object detection and semantic segmentation. We pretrained foundation models with varying numbers of parameters, including 86M, 605.26M, 1.3B, and 2.4B, to determine whether performance in downstream tasks improved with an increase in parameters. To the best of our knowledge, this is the first billion-scale foundation model in the remote sensing field. Furthermore, we propose an effective method for scaling up and fine-tuning a vision transformer in the remote sensing field. To evaluate general performance in downstream tasks, we employed the DOTA v2.0 and DIOR-R benchmark datasets for rotated object detection, and the Potsdam and LoveDA datasets for semantic segmentation. Experimental results demonstrated that, across all benchmark datasets and downstream tasks, the performance of the foundation models and data efficiency improved as the number of parameters increased. Moreover, our models achieve the state-of-the-art performance on several datasets including DIOR-R, Postdam, and LoveDA.

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