Efficient Prompt Tuning for Hierarchical Ingredient Recognition

April 14, 2025 Β· Declared Dead Β· πŸ› IEEE International Conference on Multimedia and Expo

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Authors Yinxuan Gui, Bin Zhu, Jingjing Chen, Chong-Wah Ngo arXiv ID 2504.10322 Category cs.MM: Multimedia Citations 0 Venue IEEE International Conference on Multimedia and Expo Last Checked 4 months ago
Abstract
Fine-grained ingredient recognition presents a significant challenge due to the diverse appearances of ingredients, resulting from different cutting and cooking methods. While existing approaches have shown promising results, they still require extensive training costs and focus solely on fine-grained ingredient recognition. In this paper, we address these limitations by introducing an efficient prompt-tuning framework that adapts pretrained visual-language models (VLMs), such as CLIP, to the ingredient recognition task without requiring full model finetuning. Additionally, we introduce three-level ingredient hierarchies to enhance both training performance and evaluation robustness. Specifically, we propose a hierarchical ingredient recognition task, designed to evaluate model performance across different hierarchical levels (e.g., chicken chunks, chicken, meat), capturing recognition capabilities from coarse- to fine-grained categories. Our method leverages hierarchical labels, training prompt-tuned models with both fine-grained and corresponding coarse-grained labels. Experimental results on the VireoFood172 dataset demonstrate the effectiveness of prompt-tuning with hierarchical labels, achieving superior performance. Moreover, the hierarchical ingredient recognition task provides valuable insights into the model's ability to generalize across different levels of ingredient granularity.
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