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 13761400 of 2167 papers

TitleStatusHype
Subjective and Objective Quality Assessment of High-Motion Sports Videos at Low-BitratesCode0
Exploring the Effectiveness of Video Perceptual Representation in Blind Video Quality AssessmentCode0
OVQA: A Clinically Generated Visual Question Answering Dataset0
Knowing Earlier what Right Means to You: A Comprehensive VQA Dataset for Grounding Relative Directions via Multi-Task LearningCode0
VGNMN: Video-grounded Neural Module Networks for Video-Grounded Dialogue Systems0
American == White in Multimodal Language-and-Image AI0
Modern Question Answering Datasets and Benchmarks: A Survey0
EBMs vs. CL: Exploring Self-Supervised Visual Pretraining for Visual Question Answering0
From Shallow to Deep: Compositional Reasoning over Graphs for Visual Question Answering0
VisFIS: Visual Feature Importance Supervision with Right-for-the-Right-Reason ObjectivesCode0
Tell Me the Evidence? Dual Visual-Linguistic Interaction for Answer Grounding0
DisCoVQA: Temporal Distortion-Content Transformers for Video Quality AssessmentCode0
Grounding Answers for Visual Questions Asked by Visually Impaired People0
Unified-IO: A Unified Model for Vision, Language, and Multi-Modal Tasks0
Test-Time Adaptation for Visual Document Understanding0
Language Models are General-Purpose Interfaces0
Less Is More: Linear Layers on CLIP Features as Powerful VizWiz Model0
cViL: Cross-Lingual Training of Vision-Language Models using Knowledge DistillationCode0
From Pixels to Objects: Cubic Visual Attention for Visual Question Answering0
Structured Two-stream Attention Network for Video Question Answering0
VL-BEiT: Generative Vision-Language Pretraining0
Un jeu de données pour répondre à des questions visuelles à propos d’entités nommées en utilisant des bases de connaissances (ViQuAE, a Dataset for Knowledge-based Visual Question Answering about Named Entities)0
Question Modifiers in Visual Question Answering0
Fine-tuning vs From Scratch: Do Vision & Language Models Have Similar Capabilities on Out-of-Distribution Visual Question Answering?0
An Efficient Modern Baseline for FloodNet VQACode0
Show:102550
← PrevPage 56 of 87Next →

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