COSINT-Agent: A Knowledge-Driven Multimodal Agent for Chinese Open Source Intelligence
- URL: http://arxiv.org/abs/2503.03215v1
- Date: Wed, 05 Mar 2025 06:16:15 GMT
- Title: COSINT-Agent: A Knowledge-Driven Multimodal Agent for Chinese Open Source Intelligence
- Authors: Wentao Li, Congcong Wang, Xiaoxiao Cui, Zhi Liu, Wei Guo, Lizhen Cui,
- Abstract summary: Open Source Intelligence (OSINT) requires the integration and reasoning of diverse multimodal data.<n>We introduce COSINT-Agent, a knowledge-driven multimodal agent tailored to address the challenges of OSINT in the Chinese domain.<n>Central to COSINT-Agent is the innovative EES-Match framework, which bridges COSINT-MLLM and EES-KG.
- Score: 22.216759050092385
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Open Source Intelligence (OSINT) requires the integration and reasoning of diverse multimodal data, presenting significant challenges in deriving actionable insights. Traditional approaches, including multimodal large language models (MLLMs), often struggle to infer complex contextual relationships or deliver comprehensive intelligence from unstructured data sources. In this paper, we introduce COSINT-Agent, a knowledge-driven multimodal agent tailored to address the challenges of OSINT in the Chinese domain. COSINT-Agent seamlessly integrates the perceptual capabilities of fine-tuned MLLMs with the structured reasoning power of the Entity-Event-Scene Knowledge Graph (EES-KG). Central to COSINT-Agent is the innovative EES-Match framework, which bridges COSINT-MLLM and EES-KG, enabling systematic extraction, reasoning, and contextualization of multimodal insights. This integration facilitates precise entity recognition, event interpretation, and context retrieval, effectively transforming raw multimodal data into actionable intelligence. Extensive experiments validate the superior performance of COSINT-Agent across core OSINT tasks, including entity recognition, EES generation, and context matching. These results underscore its potential as a robust and scalable solution for advancing automated multimodal reasoning and enhancing the effectiveness of OSINT methodologies.
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