Key New Features
Comparing Documents
New "Compare Documents" Module | For quick verification of the document’s integrity, the new "Compare Documents" Module in ABBYY FineReader Engine enables detecting content differences in two versions of the same document. |
Comparison of bilingual documents | The new option of the "Compare Documents" Module provides the ability to automatically detect the bilingual nature of such a document and its complex layout and to compare each column (and thus each language version) separately. |
Input of Office formats
Processing of Office documents |
In addition to a broad set of image formats, FineReader Engine can now process input documents that are created in one of Office document formats:
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Opening Office documents from memory | The new method for opening Microsoft Office and Apache OpenOffice files directly from memory allows increasing the speed of the document import step, which accelerates the overall document processing speed. |
MRZ Capture
Data capture from a Machine-Readable Zone (MRZ) | The new feature allows automatic data extraction from a machine-readable zone (MRZ) in ID documents and allows faster entering and verification of personal data during customer onboarding or verification processes. |
Improved Japanese OCR
Leading recognition accuracy | With the new version of ABBYY Fine Reader Engine, Japanese OCR has seen some major improvements, bringing recognition accuracy to a new level previously unattainable for most solutions. |
Improved Arabic OCR
End-to-end recognition for Arabic on poor images | Arabic OCR on low-quality images where general technology provides low confident results with a lot of errors. |
Improved Korean OCR
Deep learning language model for Korean | A trained model for Korean language selects the best word recognition variant from recognition hypotheses or even generates new one based on a recognition context (preceding and following words). |
New neural network-based OCR technologies
Improvements in OCR technologies |
To implement the neural network approaches in OCR technologies, ABBYY FineReader Engine was enhanced by the new features of processing the handprinted and Latin symbols:
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Machine learning barcode recognition technology | The neural network architecture introduces a new model of barcode recognition performing detection of the approximate region of a barcode, its classification, and obtaining the output represented as a region with the most likely type of barcode. |
New recognition mode | The new Accurate mode allows you to get the maximum quality of the output document, assuming a reasonable slowdown in the recognition speed. This mode is best suited for low-quality or photo-generated invoices, contracts, receipts, and ID cards. |
OCR quality improvements for text near stamps and signatures
Detecting text near stamps and signatures | Whenever an agreement contains stamps or signatures, the text nearby is recognized separately from them, thus improving the quality of the processed documents. |
New licensing options
Online License usage as Network and Standalone | The Developer’s Help of the FineReader Engine 12 has been extended by additional information about different possibilities to license the SDK, describing the individual types of licensing options in an easy-to-understand comparison table. |
Using grace periods | With the new option, customers can use the ABBYY FineReader Engine license for some time after the expiration date, thereby enlarging the license validity period. |
Ability to run Engine in cloud environments
New deployment options | New licensing type allows deployment in Virtual and Cloud environments, allowing you to offer a broader spectrum of solutions. The licensing mechanism requires internet connection and supports proxy servers. |
.NET Core wrapper
New development framework | To increase the efficiency of development teams using containers and other native environments for the popular way of software development and deployment, ABBYY FineReader Engine now offers a pre-built .NET Core 3.1 wrapper. |
New libraries in ABBYY FineReader Engine
NeoML library usage | NeoML is an open-source end-to-end machine learning framework that allows you to build, train, and deploy Machine Learning models. This framework is used by engineers for computer vision and natural language processing tasks, including image preprocessing, classification, document layout analysis, OCR, and data extraction from structured and unstructured documents. |
Embedded PDFium for processing PDFs | PDFium is a cross-platform native library conforming to PDF standards and controlling all operations related to PDF, including processing, parsing, rendering, and obtaining the output. |
Enhanced Document Classification
Document Classification using NLP and Machine Learning | With ABBYY FineReader Engine 12, incoming documents can be automatically sorted into different categories. Machine learning, OCR and natural language processing technologies are employed to train the image-based and text-based classifiers on representative documents. The received information is then used during classification step. |
Text-based classifier: advanced security of training data | To train and optimize the text-based classifier, documents representing each document category must be imported. In order to protect data contained in these documents, implemented hashing algorithms avoid the possibility to recover information from the sample documents. |
Enhanced Classification Demo Sample | ABBYY FineReader Engine is able to process PDFs, scanned or photographed document images as well as documents in Office formats. To reflect this capability in the classification process, the provided pre-compiled Demo Sample for classification was enhanced and allows now to import Office documents in addition to PDFs and image formats. |
Code sample for command-line interface (CLI)
Ready-to-use code sample | With this code sample, developers can efficiently utilize ABBYY FineReader Engine libraries and integrate document processing capabilities in command-line-based applications. |
Implementation of PDF meta-data extractor
Digitally-born PDF file processing | AuxInfo is a supplementary object of PDFium providing meta-data information from a PDF file. ABBYY R&D PDFTools team implemented its own AuxInfo object working with PDFium. |
Improved PDF processing
Improvements for PDF with "mixed" contents |
ABBYY FineReader Engine provides new capabilities for processing the PDF documents containing both image-only and digitally-born pages:
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Using additional content in PDF |
To ensure more flexible forming the PDF contents, ABBYY FineReader Engine offers the new options:
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Additional language support
Farsi OCR | ABBYY FineReader Engine features updated and improved Farsi recognition options, opening up the door for more effective work with documents from Iran, Afghanistan and many other countries of the Middle East. |
Georgian OCR | The Georgian language was added as new OCR language. |
OCR for simple mathematical formulas | Extracting characters of simple mathematical formulas allows better recognition of scientific documents containing simple single-line mathematical formulas inside the text. |
Technical preview for Burmese OCR | Burmese OCR was added as a technical preview to highlight future capabilities. |
Special languages for Arabic and Japanese dates capture | FineReader Engine supports special languages for field recognition. The new version adds improved date recognition in Arabic and Japanese. |
Technical preview for Bangla OCR | Bangla OCR was added for a technical preview to demonstrate potential functionality. |
Improved document layout recreation
Improved table reconstruction | With ABBYY FineReader Engine 12, extracted tables from documents keep their formatting better than ever. |
Detection and recreation of balanced columns | Whenever a document contains balanced columns of text (e.g., contracts, scientific papers, articles, etc.), now the initial structure stays intact, thus simplifying document processing. |
New "single-column" document model | The main improvements of the new algorithm are in the detection and analysis of tables and charts. |
Enhanced table structure analysis | With the improved mechanism of document conversion, ABBYY FineReader Engine can detect tables with columns of numbers in the "Accounting" format. |
Internal process optimization for faster processing
New scheme of the ILayout object iteration | A new scheme that speeds up the iteration of the ILayout object obtained after processing the document outside the main process. |
New scanning options
More scanning capabilities |
ABBYY FineReader Engine 12 has lots of device-based scanning features:
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Online documentation
Documentation available online | In addition to the built-in documentation, you can now use the online version providing "just in time" information about the features and capabilities of ABBYY FineReader Engine. |
Latest .NET Framework versions
.Net COM Interop wrappers support |
The distributive now includes .Net COM Interop wrappers for the following .Net Framework versions:
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New export formats
New ALTO versions support | ALTO (Analyzed Layout and Text Object) is an XML Schema that details technical metadata to describe the layout and content of physical text resources, such as the pages of a book or newspaper. The latest versions of this schema (4.0, 4.1, 4.2) are supported in FineReader Engine 12. |
PDF/A-2b and PDF/A-3b support | PDF/A is an ISO-standardized version of the Portable Document Format (PDF), specialized for use in archiving and the long-term preservation of electronic documents. Now, FineReader Engine supports all PDF/A conformance levels. |
Full functionality
9/17/2024 3:14:41 PM