--- language: - en - zh tags: - florence-2 - document-vqa - image-text-retrieval - fine-tuned license: mit base_model: microsoft/Florence-2-base-ft --- # adamchanadam/Test_Florence-2-FT-DocVQA This model is fine-tuned from [microsoft/Florence-2-base-ft](https://huggingface.co/microsoft/Florence-2-base-ft) for Document Visual Question Answering (DocVQA) tasks. ## Model description - Fine-tuned for answering questions about images, specifically focused on logo recognition and company information. - The model uses the `` prompt to indicate the task type. - Number of unique images: 28 - Number of epochs: 7 - Learning rate: 1e-06 - Optimizer: AdamW - Early stopping: Patience of 2 epochs, delta of 0.0001 Dataset statistics: Total number of questions for fine-tuning: 560. logo_recognition: 49 (8.75%) brand_identification: 48 (8.57%) visual_elements: 65 (11.61%) text_in_logo: 57 (10.18%) industry_classification: 49 (8.75%) product_service: 55 (9.82%) company_details: 89 (15.89%) negative_sample: 148 (26.43%) ## Intended use & limitations - Use for answering questions about logos and company information in images - Performance may be limited for questions or image content not represented in the training data ## Training procedure - Images were resized and normalized according to Florence-2's preprocessing standards. - The `` prompt was used during fine-tuning to indicate the task type. - Questions and answers were provided for each image in the training set. - Batch size: 4 - Evaluation metric: Cross-entropy loss on a held-out validation set For more information, please contact the model creators.