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|
| --- |
| license: apache-2.0 |
| tags: |
| - composed-image-retrieval |
| - vision-language |
| - multimodal |
| - pytorch |
| --- |
| |
| <a id="top"></a> |
| <div align="center"> |
| <h1>β TEMA: Anchor the Image, Follow the Text for Multi-Modification Composed Image Retrieval</h1> |
|
|
| <p> |
| <b>Zixu Li</b><sup>1</sup> |
| <b>Yupeng Hu</b><sup>1β</sup> |
| <b>Zhiheng Fu</b><sup>1</sup> |
| <b>Zhiwei Chen</b><sup>1</sup> |
| <b>Yongqi Li</b><sup>2</sup> |
| <b>Liqiang Nie</b><sup>3</sup> |
| </p> |
| |
| <p> |
| <sup>1</sup>Shandong University |
| <sup>2</sup>Hong Kong Polytechnic University |
| <sup>3</sup>Harbin Institute of Technology (Shenzhen) |
| </p> |
| </div> |
| |
| These are the official model and data resources for **TEMA** (Text-oriented Entity Mapping Architecture), the first Composed Image Retrieval (CIR) framework designed explicitly for multi-modification scenarios. |
|
|
| π **Paper:** [Accepted by ACL 2026] |
| π **GitHub Repository:** [lee-zixu/ACL26-TEMA](https://github.com/lee-zixu/ACL26-TEMA) |
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| --- |
|
|
| ## π Model Information |
|
|
| ### 1. Model Name |
| **TEMA** (Text-oriented Entity Mapping Architecture) Checkpoints. |
|
|
| ### 2. Task Type & Applicable Tasks |
| - **Task Type:** Composed Image Retrieval (CIR) / Vision-Language / Multimodal Alignment |
| - **Applicable Tasks:** Retrieving target images based on a reference image and complex Multi-Modification Texts (MMT), seamlessly accommodating both simple and complex modifications. |
|
|
| ### 3. Project Introduction |
| Prevailing CIR setups rely on simple modification texts, inducing two critical limitations in practical applications: **Insufficient Entity Coverage** and **Clause-Entity Misalignment**. |
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| **TEMA** brings CIR closer to real-world use cases by introducing: |
| - π§ **MMT Parsing Assistant (PA):** Utilizes an LLM-based text summarizer and a Consistency Detector during training to enhance the exposure and coverage of modified entities. |
| - π **MMT-oriented Entity Mapping (EM):** Introduces learnable queries to consolidate multiple clauses of the same entity on the text side and align them with corresponding visual entities on the image side. |
|
|
| ### 4. Training Data Source |
| The model is evaluated and trained using our newly proposed instruction-rich multi-modification datasets: |
| - **M-FashionIQ** (Fashion domain) |
| - **M-CIRR** (Open domain) |
|
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| These datasets replace short, simplistic texts with Multi-Modification Texts (MMT) generated by MLLM and verified by human annotators. |
|
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| --- |
|
|
| ## π Usage & Basic Inference |
|
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| These weights and codes are designed to be used with the official TEMA GitHub repository. |
|
|
| ### Step 1: Prepare the Environment |
| Clone the GitHub repository and install the required dependencies (evaluated on Python 3.10.8 and PyTorch 2.5.1): |
| ```bash |
| git clone [https://github.com/lee-zixu/ACL26-TEMA](https://github.com/lee-zixu/ACL26-TEMA) |
| cd TEMA |
| conda create -n tema python=3.10.8 -y |
| conda activate tema |
| |
| # Install PyTorch |
| pip install torch==2.5.1 torchvision torchaudio --index-url [https://download.pytorch.org/whl/cu121](https://download.pytorch.org/whl/cu121) |
| |
| # Install core dependencies |
| pip install transformers==4.25.0 |
| ``` |
|
|
| ### Step 2: Download Model & Data |
| Please refer to the [GitHub Repository](https://github.com/lee-zixu/ACL26-TEMA) for detailed instructions on downloading the base image datasets (FashionIQ and CIRR) and replacing their captions with our provided `mmt_captions` to construct the **M-FashionIQ** and **M-CIRR** datasets. |
|
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| Ensure your folder structure matches the requirements in the official codebase. |
|
|
| ### Step 3: Run Training / Inference |
| Once the environment and datasets are prepared, you can start the training or evaluation process: |
| ```bash |
| python3 train.py |
| ``` |
|
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| --- |
|
|
| ## β οΈ Limitations & Notes |
|
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| **Disclaimer:** This framework and the constructed M-FashionIQ/M-CIRR datasets are intended for **academic research and multimodal evaluation**. |
| - The datasets build upon existing public datasets (FashionIQ and CIRR); users must also comply with the original licenses of those datasets. |
| - The model's performance relies heavily on the quality of instruction parsing, and real-world multi-modification accuracy may vary based on domain-specific data. |
|
|
| --- |
|
|
| ## πβοΈ Citation |
|
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| If you find our paper, the M-FashionIQ/M-CIRR datasets, or this codebase useful in your research, please consider leaving a **Star** βοΈ on our GitHub repo and citing our work: |
|
|
| ```bibtex |
| @inproceedings{TEMA, |
| title={TEMA: Anchor the Image, Follow the Text for Multi-Modification Composed Image Retrieval}, |
| author={Li, Zixu and Hu, Yupeng and Fu, Zhiheng and Chen, Zhiwei and Li, Yongqi and Nie, Liqiang}, |
| booktitle={Proceedings of the Association for Computational Linguistics (ACL)}, |
| year={2026} |
| } |
| ``` |