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Indian Traffic VQA Dataset

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NIAID Data Ecosystem2026-05-10 收录
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🧭 Overview Indian Traffic VQA is a real-world Visual Question Answering (VQA) dataset focusing on Indian road traffic signboards. The dataset is designed for training and evaluating Vision-Language Models (VLMs) and VQA systems in the traffic and transportation domain. This dataset bridges a gap between real-world Indian traffic conditions and machine understanding — ideal for research in autonomous driving, smart city AI, and traffic sign recognition under natural environments. 📦 Dataset Summary • Images: 1,085 real-world traffic signboard images • Questions: 4,341 unique questions • Answers: Short, ground-truth textual responses • Source: All images were collected using a mobile phone in real Indian road environments • Format: .csv file with the following columns: o image_name — name of the image file o question — text-based query o answer — corresponding ground-truth answer ________________________________________ 🧠 Task Definition Given an image of a traffic signboard and a related question, the model must predict a short text answer. 🧩 Applications • Visual Question Answering (VQA) • Vision-Language Model (VLM) Fine-tuning • Multimodal classification of traffic signs • Dataset for benchmarking model reasoning in domain-specific visual data 🧰 Data Collection Details • Captured in diverse Indian traffic conditions (urban, rural, highways) • Includes varying lighting, occlusions, and view angles • All images are real photographs, not synthetic The .zip file contains all the 1085 images with 512x512 resolution. There are two .csv files attached. traffic_vqa_1085.csv contains one question and one answer, traffic_vqa_4341.csv contains multiple questions and answers per image. The first .csv file can be used for low resource computational environment.
创建时间:
2025-10-11
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