我是靠谱客的博主 优美大山,这篇文章主要介绍Dynamsoft Label Recognizer SDK FOR .NET/C++/JAVA,现在分享给大家,希望可以做个参考。

Enterprise-Ready Text Detection and Recognition SDK

Dynamsoft Label Recognizer SDK accurately reads alphanumeric characters and standard symbols from images of varying background colour, font, or text size. Popular uses include price tags in supermarkets, inventory labels in warehouses, VINs on cars, vehicle license plates, and ID cards.

 

MRZ Passports and ID Cards
Smart devices equipped with OCR software and technology help airports and airline employees to scan machine-readable ID cards and passports easily and instantly.

Lot No. on Drug Bottles in Healthcare
Incorporating data capture and text recognition technologies into healthcare software adds remarkable value to their applications.

Parcel Labels in Transport and Logistics
OCR technology helps in reducing the errors, energy, and time associated with manual data entry processes in the transport and logistics industries.

 

OCR Comparison    Dynamsoft Label Recognition    Document OCR
Optimized for recognition of    
Sparse and short text, sometimes random numbers and chars for machines to read

Dense text, mostly natural language

Target    
Images such as pricing labels, ID cards, tags

Full-page documents

Purpose    
Extract meaningful data that are structured and semi-structured

Convert image to text for archive and search

Localization    
Use reference regions to locate the meaningful text, such as, below a barcode, or, within a yellow rectangle

All texts in the doc are of interest

 

Recognition    
Customized regex to ensure accuracy

Grammatically interprets and analyzes phrases by using a dictionary to improve accuracy

Exceptional Customizability
Get more out of your images.

DISCOVER ALL FEATURES>

Specify an area to OCR texts using a reference region
 
Sophisticated image pre-processing algorithms

最后

以上就是优美大山最近收集整理的关于Dynamsoft Label Recognizer SDK FOR .NET/C++/JAVA的全部内容,更多相关Dynamsoft内容请搜索靠谱客的其他文章。

本图文内容来源于网友提供,作为学习参考使用,或来自网络收集整理,版权属于原作者所有。
点赞(108)

评论列表共有 0 条评论

立即
投稿
返回
顶部