--- tags: - onnx - transformers.js - image-classification - creativity-assessment - beit license: apache-2.0 datasets: - figural-drawings metrics: - accuracy pipeline_tag: image-classification --- # OCSAI-D Web (ONNX Quantized) This is a quantized ONNX version of the [POrg/ocsai-d-web](https://huggingface.co/POrg/ocsai-d-web) model, optimized for web deployment with Transformers.js. ## Model Description This model assesses originality/creativity in figural drawings. It's a fine-tuned BEiT-large model that outputs a regression score indicating the creativity level of the input drawing. ## Model Details - **Base Model**: microsoft/beit-large-patch16-224-pt22k-ft22k - **Task**: Image regression (creativity scoring) - **Input**: 224x224 RGB images - **Output**: Single regression score (0-1 range) - **Quantization**: INT8 dynamic quantization - **File Size**: ~300MB (vs 1.1GB original) ## Usage with Transformers.js ```javascript import { pipeline } from '@xenova/transformers'; // Load the model const classifier = await pipeline('image-classification', 'your-username/ocsai-d-web-onnx'); // Run inference on an image const result = await classifier('path/to/drawing.jpg'); console.log(result); ``` ## Important Notes This model is specifically designed for creativity assessment of figural drawings. The output is a single regression score that needs to be post-processed according to the original paper's methodology. ## Original Model Based on [POrg/ocsai-d-web](https://huggingface.co/POrg/ocsai-d-web) - please refer to the original model for citation information and detailed usage instructions. ## Performance The quantized model provides significant size reduction (~4x smaller) while maintaining compatibility with Transformers.js for browser-based inference.