Sensors (Jun 2024)

Explicit Image Caption Reasoning: Generating Accurate and Informative Captions for Complex Scenes with LMM

  • Mingzhang Cui,
  • Caihong Li,
  • Yi Yang

DOI
https://doi.org/10.3390/s24123820
Journal volume & issue
Vol. 24, no. 12
p. 3820

Abstract

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The rapid advancement of sensor technologies and deep learning has significantly advanced the field of image captioning, especially for complex scenes. Traditional image captioning methods are often unable to handle the intricacies and detailed relationships within complex scenes. To overcome these limitations, this paper introduces Explicit Image Caption Reasoning (ECR), a novel approach that generates accurate and informative captions for complex scenes captured by advanced sensors. ECR employs an enhanced inference chain to analyze sensor-derived images, examining object relationships and interactions to achieve deeper semantic understanding. We implement ECR using the optimized ICICD dataset, a subset of the sensor-oriented Flickr30K-EE dataset containing comprehensive inference chain information. This dataset enhances training efficiency and caption quality by leveraging rich sensor data. We create the Explicit Image Caption Reasoning Multimodal Model (ECRMM) by fine-tuning TinyLLaVA with the ICICD dataset. Experiments demonstrate ECR’s effectiveness and robustness in processing sensor data, outperforming traditional methods.

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