About us
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AI powered
OCR for Legal Documents
Extract Text from Legal Documents with OCR Technology
or drag and drop a file
Supports all image, video and audio formats, up to 100MB and 1 hour recording
By using the product, you agree to our Terms of Service and have read our Privacy Policy.
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Registered Users
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Notes Created
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Notes Created Daily
Frequently Asked Questions
Our OCR tool converts text from images of legal documents into digitized text, enabling easy editing and archiving of printed information.
Simply upload your legal document image in a supported format (e.g., JPG, PNG) and the OCR will extract the text, ready for you to copy or download.
You can use formats like JPG, PNG, GIF, BMP, and TIFF to upload images of legal documents for text extraction.
Yes, upload images of your law revision notes to extract the text and simplify study sessions with digital copies.
The tool handles various types of legal documents as images, but text quality depends on the image clarity and resolution.
No, the tool requires images. For PDFs, extract pages as images or take screenshots before uploading.
Yes, the extracted text is plain text, which you can edit after copying or downloading from the tool.
Use high-resolution images with clear, legible text to ensure more accurate OCR results for legal documents.
Yes, multiple files are supported. The tool processes them sequentially and combines the extracted text.
Logged-in users can save extracted text directly to their Evernote account for easy organization and access.
Handwritten text recognition is included, but results vary based on handwriting clarity and quality.
Each image file can be up to 100 MB, accommodating detailed scans of legal documents.
No, the tool outputs plain text only, meaning formatting and layout are not preserved.
No, the tool requires an internet connection as all processing happens online.
Low-quality images result in less accurate text extraction, so it's best to use clear, high-resolution images.