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file_name
stringclasses
7 values
quality
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text_language
stringclasses
1 value
text_length
stringclasses
7 values
text_density
stringclasses
3 values
image_quality
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07c2f32474957c360c29da122cc83003.jpg
1044*1980
English
357
Moderate
Clear, accurate colors
Yes
Left-aligned
Black
No
1a1029067d9447a1403993fbe6f42816.jpg
1050*1960
English
402
Medium
Clear, accurate colors
Yes
Left-aligned
Black
No
5440758b4072211c2e93db3d3bfdd49d.jpg
1000*1920
English
365
Medium
Clear, color accurate
Yes
Left-aligned
Gray
No
79cdf4bb711f9e3232bf80a0d67ccc09.jpg
1046*1979
English
322
High
Clear, color accurate
Yes
Left aligned
Black
No
9b2b71ae0b1330c5ef66824767a37ceb.jpg
1034*1937
English
226
High
Clear without distortion
Yes
Left aligned
Black
No
a05b3d2f5f4650dd5feb780df28bd1ff.jpg
1047*1993
English
372
High
Clear, accurate colors
Yes
Left aligned
Black
No
dd659e3c56d7868e84cb6c687bfbd6f8.jpg
1047*2011
English
373
Medium
Clear, color accurate
Yes
Centered
Black
No

Chat Record Image Dataset

Currently, with the rapid development of communication technology, chat records have become a common form of data in daily life and work. The effective parsing of these chat record images is of great significance for improving information processing efficiency. However, existing text recognition and natural language processing technologies often face challenges such as low recognition accuracy, complex backgrounds, and diverse fonts when dealing with diversified and complex image texts. This dataset aims to assist researchers in solving the technical difficulties of extracting text information from images by collecting diverse chat record images, enhancing the accuracy and efficiency of automated recognition.The data collection process uses various mobile devices to capture chat screenshots under different lighting and background conditions to ensure data diversity. In terms of quality control, we employ a three-round annotation process to ensure annotation accuracy and consistency. The annotation team consists of language technology experts, totaling 50 people. The data undergoes OCR recognition preprocessing to generate structured text, improving analysis efficiency. The data is stored in JPG format and organized and managed by conversation topics for easy retrieval and use.The core advantages of the dataset include high accuracy and diversity of annotations, with annotation accuracy exceeding 95%. We have innovatively introduced a self-supervised learning annotation method, combined with data augmentation techniques, to achieve more comprehensive language model training. The dataset effectively improves overall performance in chat record analysis, such as a 15% increase in recognition accuracy. Compared to other similar datasets in the market, our dataset offers higher annotation quality and rich scene diversity. Additionally, the dataset provides scarce corpora, offering valuable resources for low-resource language research. This dataset has good scalability, suitable for various natural language processing tasks, and can support cross-domain general applications and innovative research.

Technical Specifications

Field Type Description
file_name string File name
quality string Resolution
text_language string Identifies the language of the text in the image.
text_length integer The number of text characters contained in the image.
text_density float The average number of text characters per unit area.
image_quality string The clarity and color accuracy of the image.
has_emoji boolean Indicates whether the image contains emojis.
text_alignment string The arrangement and alignment of the text in the image.
dominant_color string The most prominent color in the image.
contains_url boolean Indicates whether the image contains URL links.

Compliance Statement

Authorization Type CC-BY-NC-SA 4.0 (Attribution–NonCommercial–ShareAlike)
Commercial Use Requires exclusive subscription or authorization contract (monthly or per-invocation charging)
Privacy and Anonymization No PII, no real company names, simulated scenarios follow industry standards
Compliance System Compliant with China's Data Security Law / EU GDPR / supports enterprise data access logs

Source & Contact

If you need more dataset details, please visit Mobiusi. or contact us via contact@mobiusi.com

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