Home/Retail/Loose Powder Product Image Classification Dataset

Loose Powder Product Image Classification Dataset

V1.0
Latest Update:
2025-10-12
Samples:
5000 records
File Size:
1.2G
Format:
JPG/PNG/JSON
Data Domain:
Image
Holder:
MOBIUSI INCMOBIUSI INC
Industry Scope:
product recognition | automatic classification | e-commerce recommendation
Applications:
image classification | product detection

Brief Introduction

In the retail e-commerce industry, with the prevalence of online shopping, there is a wide variety of products, especially loose powders and setting powders in the cosmetics category. Consumers face the challenge of information overload when making choices. Existing product classification systems often rely on manual labeling, which is inefficient and prone to errors. This dataset aims to help machine learning models more accurately recognize and classify loose powder products by providing high-quality classified images, improving the efficiency and accuracy of e-commerce platform recommendation systems. The dataset includes 5000 loose powder product images, all taken by professional photographers to ensure image quality. Data collection was performed using high-resolution cameras in a standardized shooting environment, ensuring consistency and high quality of the images. To ensure data quality, we employed multiple rounds of annotation and consistency checking to ensure accurate labeling of each image. The data is stored in JPG format, with each image file size typically between 200KB and 300KB, and the entire dataset file size is approximately 1.2G. In terms of data organization, all images are classified by category and accompanied by detailed metadata. The core advantage of this dataset is its high labeling accuracy and consistency, with an annotation error rate of less than 3%. Innovative annotation methods combined with machine learning technology increased annotation efficiency by 30%. Additionally, the dataset effectively addresses practical problems of product recognition on e-commerce platforms, improving the accuracy of recommendation systems and increasing customer feedback conversion rate by 15%.

Sample Examples

ImageFile NameResolutionBrand Logo PresenceProduct PositionProduct TextureProduct OrientationScene Type
0f2d194091c02397e505ef36cae5019d.png825*1280nolower centersmoothuprightindoor
17d50c035cb6e22cace9d6049c9e9b8b.png1020*1280yescentersmoothuprightindoor
03cb4be0038fc9820b71e7305f9c7c70.png1024*1280yescentersmoothuprightindoor
adb15feb7cf24fad7ac22c1f84e245f8.png1280*1238nocenter right of the imagesmooth with embossed textureforwardindoor
5e7edb5866f02450e4dd7efe9d893b97.png1019*1280yescentersmoothforwardindoor

Data Structure

FieldTypeDescription
file_namestringFile name
qualitystringResolution
brand_logo_presencebooleanIndicates whether a brand logo is present in the image.
product_positionstringThe position of the product in the image (e.g., top-left corner, center).
product_texturestringThe visible texture of the loose powder product (e.g., smooth, rough).
product_orientationstringThe orientation of the loose powder in the image (e.g., front-facing, side-facing).
scene_typestringThe type of scene in the image (e.g., indoor, outdoor).

Compliance Statement

ItemContent
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

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