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Llama3.2 vision model and nosiy images
1 points by epop 487 days ago
I'm working on creating a powerful OCR pipeline and have tested several technologies (like Doctr, Paddle, and the LLM-based GOT). I found that Llama 3.2 gives the most accurate text extraction, especially with high-density text and irregular layouts.

However, the model struggles with noisy images—those with stamps, handwritten annotations, and other artifacts—and simply fails to produce any output. I attempted to fine-tune it using 40k images augmented with noise (including quantization noise, salt and pepper noise, skewing, handwritten text, and multiple fonts). Unfortunately, this reduced its accuracy on well-formatted images, and it still doesn’t handle noisy images effectively.

What might I be missing here?