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Yolov8m Table Extraction

Developed by keremberke
An object detection model based on YOLOv8m, specifically designed for table extraction tasks, capable of detecting both bordered and borderless tables.
Downloads 69.06k
Release Time : 1/29/2023

Model Overview

This model is an object detection model based on the YOLOv8 architecture, specifically designed to extract table regions from document images. It can identify both bordered and borderless tables, making it suitable for document processing and data extraction scenarios.

Model Features

High Precision Table Detection
Achieves high precision with mAP@0.5(box) 0.95194 on the validation set
Supports Multiple Table Types
Capable of detecting both bordered and borderless tables
Based on YOLOv8 Architecture
Utilizes the latest YOLOv8m architecture, balancing speed and accuracy

Model Capabilities

Table Region Detection
Document Image Analysis
Object Detection

Use Cases

Document Processing
PDF Table Extraction
Automatically detects and extracts table regions from PDF documents
Accurately identifies the location of tables in documents
Scanned Document Processing
Processes scanned document images to locate tables within them
Suitable for noisy scanned documents
Data Extraction
Table Data Digitization
Serves as a preprocessing step for OCR by first locating table regions
Improves the accuracy of subsequent OCR processing
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