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file_name
stringclasses
5 values
quality
stringclasses
5 values
category_label
stringclasses
3 values
brand_name
stringclasses
3 values
product_color
stringclasses
2 values
material_type
stringclasses
1 value
cap_type
stringclasses
5 values
label_text
stringclasses
5 values
bottle_shape
stringclasses
4 values
image_quality_score
stringclasses
2 values
background_complexity
stringclasses
3 values
image_orientation
stringclasses
2 values
2ccbf53ca5eb269decbff854ccf5af91.jpg
1080*1306
Refillable Bottle
MINISO
Transparent
Plastic
Pump Head Cap
Travel Bottle
Cylindrical
8
Simple
Vertical
2cf1a68a7de18f69e4cb79ea08003047.jpg
1080*1328
Spray Refillable Bottle
Hello Kitty
Transparent
Plastic
Spray Pump
HELLO KITTY
Arc-shaped Cylindrical
8
Moderate
Vertical
37d4094c6283f03774af2d22a989d58e.jpg
1080*1334
Dispenser Bottle
MINISO
Various Colors
Plastic
Various Cap Types
Text Unconfirmed
Various Shapes
9
Medium
Vertical
b04d2cd83dcc33455fca8401399a9b03.jpg
1080*1324
Refillable Bottle
SLADKO
Transparent
Plastic
Pump Cap
Cream Type Refillable Box SLADKO
Cylindrical
8
Simple
Horizontal
f063257e016d6bc243fe4d2ae5d22fc9.jpg
1080*1315
Refillable Bottle
SLADKO
Transparent
Plastic
Press Pump Cap
Press Withdraw Packaging Bottle 100ml
Round
8
Moderate
Vertical

Bottled Goods Image Classification Dataset

The retail e-commerce industry currently faces challenges such as low efficiency and poor accuracy in product classification, affecting inventory management and user experience. Existing image classification solutions often rely on limited sample sizes and simple feature extraction methods, resulting in insufficient model generalization capability. This dataset aims to address the problem of insufficient samples in image classification by providing a large number of high-quality images of bottled goods, thereby enhancing classification accuracy and efficiency. Data collection is done using professional photographic equipment under standard lighting conditions to ensure image quality. Quality control measures include multiple rounds of annotation and expert review to ensure the accuracy of each image's label. The data storage format is JPG, organized by category, facilitating subsequent processing and use. The core advantage of this dataset is a labeling accuracy of over 95%, strong sample consistency, and high completeness. By introducing new labeling methods and data augmentation techniques, the model's accuracy in classification tasks is improved by 10%. Moreover, this dataset provides a reliable solution for product identification in retail e-commerce, significantly improving inventory management efficiency.

Technical Specifications

Field Type Description
file_name string File name
quality string Resolution
category_label string The category of the repackaging bottle product as described by the image.
brand_name string The brand name that the product belongs to.
product_color string The primary color of the product.
material_type string The primary material used in the repackaging bottle.
cap_type string The type of cap used on the bottle, such as twist cap, flip cap, etc.
label_text string Text information visible on the label of the bottle.
bottle_shape string The overall shape of the repackaging bottle, such as round, square, etc.
image_quality_score float A quantitative evaluation score of the image quality.
background_complexity string The complexity of the image background described as simple, moderate, complex, etc.
image_orientation string The orientation of the image, such as horizontal, vertical, etc.

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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