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file_name
stringclasses
5 values
quality
stringclasses
1 value
species_name
stringclasses
2 values
blossom_color
stringclasses
2 values
petal_count
stringclasses
5 values
flower_shape
stringclasses
5 values
background_type
stringclasses
2 values
focus_level
stringclasses
5 values
image_clarity
stringclasses
5 values
162f500eeff4afdc8aef90cb5b87a0d3.jpg
1920*2560
Unknown
Pink
Insufficient Information
Single, Round
Natural Background
Foreground Clear, Background Blurred
High Definition
4b7e0282ee6ab28e9c91c9ddf827701c.jpg
1920*2560
Unknown
White
1
Single petal
Natural
Foreground clear, background blurred
Clear
4da96a561cda8e1ed87d08378d1c6d5d.jpg
1920*2560
Unknown
Pink
About five petals
Round
Natural
Clear foreground, blurred background
Overall clarity
b550a08193662ff81fd59ba6856b3f5c.jpg
1920*2560
Unknown
Pink
Five petals
Open type
Natural
Clear foreground, slightly blurred background
High definition
e72e5a521209b43399b5e189fa482a9f.jpg
1920*2560
Uncertain Specific Variety
Pink
Five or More Petals
Round, Layered Petals
Natural
Foreground Clear, Background Blurry
Relatively Clear

Ornamental Flowers Plum Recognition Image Dataset

In the current field of agriculture, forestry, and fisheries, plant recognition, especially the recognition of plum varieties, faces challenges of low efficiency and insufficient accuracy in manual recognition. Existing solutions largely depend on human experience and simple image retrieval, which are inadequate to meet the recognition needs under complex varieties and environments. This dataset aims to enhance the automation and accuracy of plum variety recognition through image classification and machine learning algorithms. The data is collected by high-definition cameras under natural light and outdoor environments, covering multiple garden and cultivation environments. Quality control is reinforced by multiple rounds of annotation to enhance consistency and clarity, and an expert team reviews the annotations to ensure professionalism. The annotation team consists of over 20 experts in botany and image processing. Data undergoes preprocessing such as image enhancement and noise removal to improve model training effectiveness and is stored and organized efficiently in JPG format. The integrated data processing workflow ensures efficient data utilization. This dataset is characterized by its high annotation accuracy and consistency, with an annotation accuracy rate of over 95% ensuring data reliability. Its innovation lies in new data augmentation methods and quality assessment systems, improving classification and management efficiency by over 30% when applied in practical garden management. Compared to similar datasets, this dataset offers a more comprehensive variety count, with over 50 varieties, making it an indispensable research resource due to its scarce data characteristics. Additionally, the data architecture design allows it to have good scalability and generality, easily expandable to other flower species recognition scenarios.

Technical Specifications

Field Type Description
file_name string File name
quality string Resolution
species_name string The name of the plum blossom species.
blossom_color string The color of the plum blossom.
petal_count integer The number of petals on the plum blossom.
flower_shape string The shape characteristics of the plum blossom.
background_type string The type of background in the image, such as natural or artificial.
focus_level float The level of focus clarity in the image.
image_clarity string Overall clarity of the image, such as high definition or blurry.

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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