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VHM: Versatile and Honest Vision Language Model for Remote Sensing Image Analysis

About

This paper develops a Versatile and Honest vision language Model (VHM) for remote sensing image analysis. VHM is built on a large-scale remote sensing image-text dataset with rich-content captions (VersaD), and an honest instruction dataset comprising both factual and deceptive questions (HnstD). Unlike prevailing remote sensing image-text datasets, in which image captions focus on a few prominent objects and their relationships, VersaD captions provide detailed information about image properties, object attributes, and the overall scene. This comprehensive captioning enables VHM to thoroughly understand remote sensing images and perform diverse remote sensing tasks. Moreover, different from existing remote sensing instruction datasets that only include factual questions, HnstD contains additional deceptive questions stemming from the non-existence of objects. This feature prevents VHM from producing affirmative answers to nonsense queries, thereby ensuring its honesty. In our experiments, VHM significantly outperforms various vision language models on common tasks of scene classification, visual question answering, and visual grounding. Additionally, VHM achieves competent performance on several unexplored tasks, such as building vectorizing, multi-label classification and honest question answering. We will release the code, data and model weights at https://github.com/opendatalab/VHM .

Chao Pang, Xingxing Weng, Jiang Wu, Jiayu Li, Yi Liu, Jiaxing Sun, Weijia Li, Shuai Wang, Litong Feng, Gui-Song Xia, Conghui He• 2024

Related benchmarks

TaskDatasetResultRank
Scene ClassificationAID
Top-1 Acc91.7
47
Scene ClassificationNWPU
Top-1 Acc94.54
38
Remote Sensing Visual GroundingDIOR-RSVG official (test)
Acc@0.50.6167
30
Image CaptioningRSICD
CIDEr49.8
26
Visual GroundingDIOR-RSVG
Accuracy@0.556.17
25
Visual Question AnsweringRSVQA-HR
Presence Score64
24
Image CaptioningSydney Captions
BLEU-444.67
24
Hallucination assessmentRSHalluEval 1.0 (test)
HF Information Accuracy0.9167
21
Remote Sensing Visual Question AnsweringRSVQA low-resolution
LR Rural Score88
19
Image CaptioningUCM Captions
BLEU-442.08
19
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