SOTAVerified

Visual Question Answering (VQA)

Visual Question Answering (VQA) is a task in computer vision that involves answering questions about an image. The goal of VQA is to teach machines to understand the content of an image and answer questions about it in natural language.

Image Source: visualqa.org

Papers

Showing 576600 of 2167 papers

TitleStatusHype
OK-VQA: A Visual Question Answering Benchmark Requiring External KnowledgeCode1
FAVER: Blind Quality Prediction of Variable Frame Rate VideosCode1
ERNIE-Layout: Layout Knowledge Enhanced Pre-training for Visually-rich Document UnderstandingCode1
HAAR: Text-Conditioned Generative Model of 3D Strand-based Human HairstylesCode1
MELTR: Meta Loss Transformer for Learning to Fine-tune Video Foundation ModelsCode1
MicroVQA: A Multimodal Reasoning Benchmark for Microscopy-Based Scientific ResearchCode1
Mimic In-Context Learning for Multimodal TasksCode1
Exploring Opinion-unaware Video Quality Assessment with Semantic Affinity CriterionCode1
HallE-Control: Controlling Object Hallucination in Large Multimodal ModelsCode1
MISS: A Generative Pretraining and Finetuning Approach for Med-VQACode1
Evaluating Image Hallucination in Text-to-Image Generation with Question-AnsweringCode1
Hierarchical Question-Image Co-Attention for Visual Question AnsweringCode1
LaPA: Latent Prompt Assist Model For Medical Visual Question AnsweringCode1
MedBLIP: Bootstrapping Language-Image Pre-training from 3D Medical Images and TextsCode1
MMBERT: Multimodal BERT Pretraining for Improved Medical VQACode1
An Evaluation of Image-Based Verb Prediction Models against Human Eye-Tracking Data0
Adventurer's Treasure Hunt: A Transparent System for Visually Grounded Compositional Visual Question Answering based on Scene Graphs0
D-Rax: Domain-specific Radiologic assistant leveraging multi-modal data and eXpert model predictions0
Grounding Chest X-Ray Visual Question Answering with Generated Radiology Reports0
DoReMi: Grounding Language Model by Detecting and Recovering from Plan-Execution Misalignment0
An Evaluation of GPT-4V and Gemini in Online VQA0
Grounding Answers for Visual Questions Asked by Visually Impaired People0
Grounding Complex Navigational Instructions Using Scene Graphs0
Domain-robust VQA with diverse datasets and methods but no target labels0
Do Explanations make VQA Models more Predictable to a Human?0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1humanAccuracy89.3Unverified
2DREAM+Unicoder-VL (MSRA)Accuracy76.04Unverified
3TRRNet (Ensemble)Accuracy74.03Unverified
4MIL-nbgaoAccuracy73.81Unverified
5Kakao BrainAccuracy73.33Unverified
6Coarse-to-Fine Reasoning, Single ModelAccuracy72.14Unverified
7270Accuracy70.23Unverified
8NSM ensemble (updated)Accuracy67.55Unverified
9VinVL-DPTAccuracy64.92Unverified
10VinVL+LAccuracy64.85Unverified
#ModelMetricClaimedVerifiedStatus
1PaLIAccuracy84.3Unverified
2BEiT-3Accuracy84.19Unverified
3VLMoAccuracy82.78Unverified
4ONE-PEACEAccuracy82.6Unverified
5mPLUG (Huge)Accuracy82.43Unverified
6CuMo-7BAccuracy82.2Unverified
7X2-VLM (large)Accuracy81.9Unverified
8MMUAccuracy81.26Unverified
9LyricsAccuracy81.2Unverified
10InternVL-CAccuracy81.2Unverified
#ModelMetricClaimedVerifiedStatus
1BEiT-3overall84.03Unverified
2mPLUG-Hugeoverall83.62Unverified
3ONE-PEACEoverall82.52Unverified
4X2-VLM (large)overall81.8Unverified
5VLMooverall81.3Unverified
6SimVLMoverall80.34Unverified
7X2-VLM (base)overall80.2Unverified
8VASToverall80.19Unverified
9VALORoverall78.62Unverified
10Prompt Tuningoverall78.53Unverified