Dataset Viewer
Auto-converted to Parquet Duplicate
file_name
stringclasses
5 values
quality
stringclasses
2 values
fruit_color
stringclasses
4 values
fruit_size
stringclasses
4 values
ripeness_level
stringclasses
5 values
disease_presence
stringclasses
3 values
leaf_condition
stringclasses
2 values
fruit_count
stringclasses
4 values
background_type
stringclasses
3 values
lighting_conditions
stringclasses
3 values
0adf5e57611bd6ed87075488af245d40.jpg
1920*2560
red with green
medium size
half-ripe
no disease
healthy
4
other plants
cloudy
6a915a0a05aabd815f4f2f2cbe331762.jpg
3060*4080
red and green mixed
medium size
partially ripe
no disease
healthy
1
other plants
cloudy day
9c2a27cfa56a8e00b5f06dc3abcee604.jpg
1920*2560
red
smaller than average
not ripe
no disease
healthy
1
other plants
cloudy
9fa32e50072a3f7f41d4d4d0f998a214.jpg
1920*2560
red
medium
ripe
no diseases
healthy
multiple pomegranates
building
cloudy
dce00e5a0bedcf8f98ee6d43b6f2b8c2.jpg
1920*2560
No pomegranate fruit observed
No pomegranate fruit observed
No pomegranate fruit observed
No disease
Healthy
0
Ground
Cloudy

Pomegranate Fruit Recognition Image Dataset for Garden Flowers

In the current agricultural sector, efficiently recognizing and managing garden plants, particularly pomegranate fruits, is a significant challenge. Conventional manual recognition and management methods are time-consuming, labor-intensive, and have low accuracy. The application of existing image recognition technologies in complex environments still faces many bottlenecks. The construction of this dataset aims to solve the problem of pomegranate fruit classification in intelligent garden plant recognition, enhancing the intelligence level of garden management. Data collection utilizes high-resolution cameras to shoot pomegranate fruits of different varieties and growth states under various lighting conditions, ensuring data diversity. A professional team of agricultural experts carried out multiple rounds of annotation, proofreading, and review to establish high-quality data annotations. The annotation team has a rich agronomy background with a scale of more than 20 people. Data preprocessing uses image enhancement, denoising, and normalization techniques, and stores in JPG format, organized and classified according to tree species, fruit maturity, and other labels. The dataset achieves 99% consistency in annotation accuracy and innovatively integrates multimodal data comparison to enhance model robustness. This dataset not only improves the accuracy of fruit recognition models, effectively solving the inefficiency of intelligent garden management but also increases computational efficiency and model performance by more than 20% compared to similar datasets. The diversity and detailed annotation of the dataset provide unique advantages in the field of fruit recognition, and its methods and technologies can be extended to other fruit trees, offering high versatility and scalability.

Technical Specifications

Field Type Description
file_name string File name
quality string Resolution
fruit_color string The appearance color of the pomegranate fruit, such as red, yellow, etc.
fruit_size float The size of the pomegranate fruit, usually measured by diameter or weight.
ripeness_level string The ripeness state of the pomegranate fruit, such as unripe, semi-ripe, ripe.
disease_presence boolean Indicates whether there are fruit diseases present in the image.
leaf_condition string The health condition of the plant leaves, such as healthy, wilted, pest-infested.
fruit_count integer The count of pomegranate fruits in the image.
background_type string The type of background in the image, such as sky, ground, other plants.
lighting_conditions string The lighting conditions during the capture, such as sunny, cloudy.

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

Downloads last month
28