Home/Agriculture/Tomato Fruit Counting Dataset

Tomato Fruit Counting Dataset

V1.0
Latest Update:
2025-10-12
Samples:
5000 records
File Size:
1.5G
Format:
JPG/PNG/JSON
Data Domain:
Image
Holder:
MOBIUSI INCMOBIUSI INC
Industry Scope:
agricultural production | fruit counting | smart agriculture
Applications:
object detection | image recognition

Brief Introduction

The current agricultural industry faces challenges of inefficiency and lack of accuracy in fruit counting, especially in large-scale cultivation. Manual counting is not only time-consuming but also prone to errors. Most existing solutions rely on traditional image processing techniques, which cannot adapt to complex environmental changes and the diversity of fruit types. Therefore, the development of an efficient and accurate tomato fruit counting dataset aims to improve counting precision and efficiency through deep learning technology. This dataset contains images of tomatoes in various scenarios, which, through effective data annotation and processing, aids researchers and developers in training for object detection and image recognition. Data collection is conducted using drones and high-resolution cameras in greenhouse environments, ensuring high-quality image acquisition. For quality control, a combination of multiple rounds of annotation and expert review ensures data annotation accuracy and consistency. Data is stored in JPEG format, organized by image ID for quick retrieval and access. The dataset has a clear structure, facilitating subsequent model training and testing.

Sample Examples

ImageFile NameResolutionDamage PresenceTomato Size CategoryLeaf CoverageLighting ConditionBackground ClutterPlant Health
f881f16997fa60a323757b8f47e657c9.jpg3024*4032nonesmalllowsunnymediumhealthy
665c61a8a3e8be68857a2dbe476f31b1.jpg3456*5184nonemediumlowindoor lightingmediumhealthy
5d13f05e6a22f14002a4bc4a282bcf08.jpg4640*6960NoneMediumMediumSunnyMediumHealthy
cccef43dd0f70525df065d694d16fe55.jpg3456*5184NoneMediumLowSunnyMediumHealthy

Data Structure

FieldTypeDescription
file_namestringFile name
qualitystringResolution
damage_presencebooleanIndicates whether the tomato fruits exhibit any damage, marked as yes or no.
tomato_size_categorystringThe size category of the tomato fruits, such as small, medium, or large.
leaf_coveragefloatThe proportion of the tomato fruits covered by leaves in the image.
lighting_conditionstringThe lighting conditions at the time of image capture, such as sunny, cloudy, or indoor lighting.
background_clutterstringThe level of background complexity, described as low, medium, or high.
plant_healthstringThe observed health condition of the plant, such as healthy or diseased.

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

Can't find the data you need?

Post a request and let data providers reach out to you.