## CLIP This folder illustrates how to use CLIP to build text index and to conduct cross-modal retrieval baseline. **** ## Catalogue: * 1. Build Text Index * 1.1. Build Text Index for MSCOCO * 1.1.1. Download Our Built Index * 1.1.2. Construct the Index by Yourself * 1.2. Build Text Index for Flickr30k * 1.2.1. Download Our Built Index * 1.2.2. Construct the Index by Yourself * 2. CLIP Retrieval Baseline * 2.1. In Domain CLIP Retrieval * 2.2. Cross Domain CLIP Retrieval **** ### 1. Build Text Index: We show how to build the text index, from which the caption is retrieved from, using CLIP. #### 1.1. Build Text Index for MSCOCO: First, we demonstrate how to build text index for MSCOCO. #### 1.1.1. Download Our Post-processed Index: We share our built index for MSCOCO via this [[link]](https://drive.google.com/file/d/1Dx_RPeAmydS6ZYuiJ-dLlK9-DjDZkxAh/view?usp=sharing). After downloading, unzip the downloaded file **mscoco_index.zip** under the current directory. > **** The resulting directory looks like: . ├── ./mscoco_index/ ├── index_matrix.txt # The file that stores the representations of captions from the training set of MSCOCO. Each row is a vector that corresponds to a specific caption from the training set. └── text_mapping.json # The file that stores the mappings between the representation and the corresponding caption. #### 1.1.2. Construct the Index by Yourself: You can also rebuild the index by yourself. First, you should make sure you have downloaded the MSCOCO data following instructions [[here]](https://github.com/yxuansu/MAGIC/tree/main/image_captioning/data#1-mscoco-benchmark). Then, you can run the following command to build the index. ```yaml chmod +x ./build_mscoco_index.sh ./build_mscoco_index.sh ``` The arguments are as follows: * `--clip_name`: The configuration of the pre-trained CLIP model from huggingface. * `--text_file_path`: Where the training text corpus stores. * `--save_index_prefix`: In which directory you would like to store your index files. * `--save_index_name`: The saved name of the caption representations. * `--save_mapping_dict_name`: The saved name of the mapping dictionary between representations and captions. * `--batch_size`: The inference batch size. #### 1.2. Build Text Index for Flickr30k: Next, we demonstrate how to build text index for Flickr30k. #### 1.2.1. Download Our Post-processed Index: We share our built index for Flickr30k via this [[link]](https://drive.google.com/file/d/1hS58_ir5pdZZPckApCtlz2RyasCQbrPf/view?usp=sharing). After downloading, unzip the downloaded file **flickr30k_index.zip** under the current directory. > **** The resulting directory looks like: . ├── ./flickr30k_index/ ├── index_matrix.txt # The file that stores the representations of captions from the training set of Flickr30k. Each row is a vector that corresponds to a specific caption from the training set. └── text_mapping.json # The file that stores the mappings between the representation and the corresponding caption. #### 1.2.2. Construct the Index by Yourself: You can also rebuild the index by yourself. First, you should make sure you have downloaded the Flickr30k data following instructions [[here]](https://github.com/yxuansu/MAGIC/tree/main/image_captioning/data#2-flickr30k-benchmark). Then, you can run the following command to build the index. ```yaml chmod +x ./build_flickr30k_index.sh ./build_flickr30k_index.sh ``` The arguments are as follows: * `--clip_name`: The configuration of the pre-trained CLIP model from huggingface. * `--text_file_path`: Where the training text corpus stores. * `--save_index_prefix`: In which directory you would like to store your index files. * `--save_index_name`: The saved name of the caption representations. * `--save_mapping_dict_name`: The saved name of the mapping dictionary between representations and captions. * `--batch_size`: The inference batch size. **** ### 2. CLIP Retrieval Baseline: Here, we show how to conduct the CLIP retrieval baseline. #### 2.1. In Domain CLIP Retrieval: To retrieve the captions from the in domain training set, you should run the following command: ```yaml chmod +x ./X_clip_retrieval.sh ./X_clip_retrieval.sh ``` Here, X is in ['mscoco', 'flickr30k'] which corresponds for the MSCOCO and Flickr30k benchmarks. The arguments are as follows: * `--clip_name`: The configuration of the pre-trained CLIP model from huggingface. * `--test_image_prefix_path`: Where the test set images stores. * `--test_path`: Where the reference test captions file stores. * `--index_matrix_path`: The path of the representation index file. * `--mapping_dict_path`: The path of the mapping dictionary between representations and captions. * `--save_path_prefix`: Where to save the inferenced result. * `--save_name`: The saved name of the inferenced result. **[Note]** As we are conducting in domain CLIP retrieval, the test images and the caption index should come from the same benchmark. #### 2.2. Cross Domain CLIP Retrieval: To retrieve the captions from the cross domain training set, you should run the following command: ```yaml chmod +x ./source_X_target_Y_clip_retrieval.sh ./source_X_target_Y_clip_retrieval.sh ``` Here, X is the source domain from ['mscoco', 'flickr30k'] and Y is the target domain from ['flickr30k', 'mscoco']. The arguments are as follows: * `--clip_name`: The configuration of the pre-trained CLIP model from huggingface. * `--test_image_prefix_path`: Where the test set images stores. * `--test_path`: Where the reference test captions file stores. * `--index_matrix_path`: The path of the representation index file. * `--mapping_dict_path`: The path of the mapping dictionary between representations and captions. * `--save_path_prefix`: Where to save the inferenced result. * `--save_name`: The saved name of the inferenced result. **[Note]** As we are conducting cross domain CLIP retrieval, the test images and the caption index should come from **different** benchmarks.