file_name stringclasses 4 values | quality stringclasses 4 values | insect_type stringclasses 4 values | damage_type stringclasses 3 values | damage_severity stringclasses 2 values | weather_condition stringclasses 3 values | plant_type stringclasses 3 values |
|---|---|---|---|---|---|---|
3ceda9effab6e1c9756113adfb764d19.png | 1535*2000 | Aphids | Leaf Notches | Severe | Cloudy | Unknown Plant |
770749400531a0b49878d2af1383b002.png | 1475*2000 | Unknown | Leaf bite marks | Moderate | Indoor lighting | Unknown |
be75a92c131db8fee6b1aa1e2ef31388.png | 2683*2000 | Aphid | Leaf bite marks | Moderate | Cloudy | Unknown |
fdb14b222616f1d77968d5c48a826f33.png | 1536*2000 | Unidentifiable pest type | Leaf spots | Moderate | Sunny | Unidentifiable plant type |
Automatic Farmland Pest Monitoring Dataset
Current agriculture faces challenges in pest monitoring regarding real-time capability and accuracy. Traditional methods rely mostly on manual inspection, which is inefficient and prone to errors. Existing automated monitoring systems often fail to adapt to complex farmland environments, resulting in frequent occurrences of missed detections and false alarms. This dataset aims to provide high-quality data support for AI training by combining individual pests and feeding traces to improve the accuracy and real-time capability of pest monitoring. Data is collected using drones and ground cameras, covering different types of farmland and climatic conditions. We conducted multiple rounds of annotation and ensured data quality through consistency checks and expert reviews. Data is stored in JPG images and JSON format annotation information, which is clearly structured for subsequent processing and analysis. This dataset has a high annotation accuracy with annotation consistency exceeding 90% and completeness over 95%. We introduce new data augmentation techniques to enhance the model's generalization ability, which is expected to increase pest recognition rates by 15% and reduce false alarm rates by 30%, offering significant application value.
Technical Specifications
| Field | Type | Description |
|---|---|---|
| file_name | string | File name |
| quality | string | Resolution |
| insect_type | string | The type of insect pest identified in the image, such as locust or aphid. |
| damage_type | string | The type of plant damage identified in the image, such as leaf bite marks or stem damage. |
| damage_severity | string | The severity of the plant damage identified in the image, such as mild, moderate, or severe. |
| weather_condition | string | The weather condition at the time the image was taken, such as sunny, cloudy, or rainy. |
| plant_type | string | The type of plant identified that is being damaged by the insect pests, such as wheat or rice. |
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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