CVAIApr 21

PLaMo 2.1-VL Technical Report

arXiv:2604.1932472.3
Predicted impact top 40% in CV · last 90 daysOriginality Incremental advance
AI Analysis

It provides a practical VLM for Japanese-language edge applications, with demonstrated gains in factory and infrastructure tasks.

PLaMo 2.1-VL is a lightweight VLM for edge deployment with Japanese-language support, achieving 61.5 ROUGE-L on JA-VG-VQA-500 and 85.2% accuracy on Japanese Ref-L4, and improving anomaly detection F1-score from 39.7 to 64.9 via fine-tuning.

We introduce PLaMo 2.1-VL, a lightweight Vision Language Model (VLM) for autonomous devices, available in 8B and 2B variants and designed for local and edge deployment with Japanese-language operation. Focusing on Visual Question Answering (VQA) and Visual Grounding as its core capabilities, we develop and evaluate the models for two real-world application scenarios: factory task analysis via tool recognition, and infrastructure anomaly detection. We also develop a large-scale synthetic data generation pipeline and comprehensive Japanese training and evaluation resources. PLaMo 2.1-VL outperforms comparable open models on Japanese and English benchmarks, achieving 61.5 ROUGE-L on JA-VG-VQA-500 and 85.2% accuracy on Japanese Ref-L4. For the two application scenarios, it achieves 53.9% zero-shot accuracy on factory task analysis, and fine-tuning on power plant data improves anomaly detection bbox + label F1-score from 39.7 to 64.9.

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