Smart TV Image Classification Dataset

#image classification #object detection #smart home #product recognition #market analysis
  • 20000 records
  • 2.9G
  • JPG/PNG/JSON
  • CC-BY-NC-SA 4.0
  • MOBIUSI INCMOBIUSI INC
Updated:2026-02-04

AI Analysis & Value Prop

The current smart device industry is rapidly developing, and the smart TV market competition is increasingly fierce. However, there are still many challenges in image recognition technology, such as insufficient recognition accuracy and low classification efficiency. Existing image classification solutions often fail to meet practical application needs, especially underperforming in complex environments. Therefore, establishing a high-quality smart TV image classification dataset aims to improve the accuracy and robustness of image classification models. This dataset collected images of various models of wall-mounted and curved TVs using high-resolution shooting equipment and captured images under different lighting and angles to ensure data diversity and representativeness. During data processing, multiple rounds of annotation and expert review mechanisms were implemented to ensure annotation accuracy and consistency. Data is ultimately stored in JPG format, organized in a folder structure by category, facilitating subsequent model training and evaluation. The core advantages of this dataset include its high annotation accuracy (over 95%), rich sample diversity (covering different brands and models), and the application of innovative enhancement techniques such as rotation and cropping to enhance data utility and model generalization capability. It is expected that after using this dataset, the accuracy of image classification models will increase by more than 15%, significantly improving the recognition and classification performance of smart TVs.

Dataset Insights

Sample Examples

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Technical Specifications

FieldTypeDescription
file_namestringFile name
qualitystringResolution
image_categorystringThe category information of the image, distinguishing between wall-mounted and curved TVs.
aspect_ratiostringThe aspect ratio of the image, such as 16:9 or 4:3.
color_modestringThe color mode of the image, such as RGB or grayscale.
dominant_colorstringThe dominant color in the image, such as blue or black.
image_brightnessdoubleThe average brightness value of the image.
image_contrastdoubleThe contrast value of the image, measuring the difference between light and dark areas.
screen_ratiodoubleThe proportion of the image occupied by the TV screen.
tv_positionstringThe description of the TV's position in the image, such as centered or top-left.

Compliance Statement

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

Frequently Asked Questions

What is the main purpose of the Smart TV Image Classification Dataset?
The dataset is mainly used for research and development of image recognition systems for smart TVs, particularly for distinguishing between wall-mounted TVs and curved TVs.
What are the image sources for the Smart TV Image Classification Dataset?
The image sources for this dataset include official images and user-generated content from various models and brands of smart TVs.
How does the Smart TV Image Classification Dataset help improve TV recognition systems?
By using the dataset for training, recognition systems can more efficiently identify and distinguish between wall-mounted and curved TVs, enhancing user experience.
Which image classification algorithms is this dataset suitable for?
This dataset is suitable for a variety of image classification algorithms, including deep learning techniques such as convolutional neural networks (CNNs).
What are the potential challenges of using the Smart TV Image Classification Dataset?
Potential challenges include image quality under varying lighting conditions, classification of similar TV models, and the accuracy of dataset labeling.

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Cite this Work

@dataset{Mobiusi2025,
  title={Smart TV Image Classification Dataset},
  author={MOBIUSI INC},
  year={2025},
  url={https://www.mobiusi.com/datasets/a313f3ba9747a1605478742dec92f579?dataset_scene_id=6},
  urldate={2025-09-15},
  keywords={smart TV dataset, image classification dataset, smart device image recognition},
  version={1.0}
}

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