glosys AI for Agriculture


AI & Cloud Software Suite and SaaS enabled Platform for AI and Analytics Team to focus on Agriculture Data Management, Annotation Automation, Model Management for Agriculture, MLOps Automation and Agriculture data security


Solutions / glosys AI for Agriculture





glosys Agriculture AI Overview

glosys Agriculture AI, One of the components of glosys AI Platform, provides AI & Cloud Software Suite and SaaS Applications and Services for AI and Analytics Team to focus on Agriculture Data Management, Annotation Automation, Model Management for Agriculture, MLOps Automation and Agriculture data security in the digital world

Features We offer

Agriculture Data Management



glosys Agriculture AI manages Agriculture data sets in terms of data extraction, transformation, loading and processing effectively

Agriculture Annotation Automation



glosys Agriculture AI focuses on auto-annotating, Agriculture image and video annotations, interpolate and fine tune the performance of the annotator for Agriculture data

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Agriculture Models Management



glosys Agriculture AI leverages construction of Agriculture ML Pipelines, Auto-ML to develop production-ready Agriculture AI, Model Workflows, Models Hub and Model Metrics for Agriculture data

Agriculture MLOps Automation



glosys Agriculture AI harnesses the power of construction of Agriculture CI/CD AI Pipelines using built-in neural networks, python SDK, webhooks and advanced orchestration

Agriculture Data Security



glosys Agriculture AI protects and secures image and video data using security features such as roles management, profiles and permissions management, access control and field level security

Model Types glosys Agriculture AI leverages

Object Detection & Localization

Detect and locate the presence of multiple objects within an image, drawing bounding boxes around them to indicate their position and size

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Object Classification

Identify and assign a label or multiple labels to images based on the presence or absence of specific features or patterns within the image

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Captioning & Action Recognition

Automated process of generating textual description of an image, identify and classify human actions or movements within a video using action recognition

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Semantic Segmentation

Divide an image into distinct regions or segments, and assign labels representing the category of objects or features they belong to, to each individual pixel

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Instance Segmentation

Detect and delineate individual object instances within an image, and assign a unique label to each pixel that belongs to that instance

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Object Tracking

Follow or track the movement of one or more objects within a video sequence by detecting and matching features across frames.

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Usecases for Agriculture

Monitor Crop Health



Classify between different crop species and weeds
Analyze soil moisture, temperature, humidity, and nutrient levels to assess the overall health of the crop and provide insights into irrigation and fertilization needs.
Development of Agriculture Drones with Maximum Weight, Operating Speed, Operating Altitude, Endurance, Payload, No. of Motors, No. of Propellers, Controller, Nozzle Type, No. of Nozzles, Spray width, Acres Coverage, Power System, Type of Fuel, Fuel Tank Capacity and Back up

Forecasting Pest Infestations



Certain pests thrive under specific weather conditions. Monitoring temperature, humidity, rainfall, and other weather parameters helps predict the likelihood of pest outbreaks. Weather stations and online weather services can provide valuable data.
Analyze historical data, weather patterns, and other relevant information to predict pest outbreaks.
Identify the presence of pests and provide early warnings to farmers, allowing for targeted pest management strategies.

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Identify Crop Diseases



Visual observation of symptoms on plants, such as wilting, discoloration, spots, lesions, and deformities.
Inspecting crops for signs of diseases with the help of drones equipped with cameras for aerial monitoring.
Plant pathologists analyze samples of infected plants in laboratories using microscopic examination, DNA testing, and other molecular methods, to identify pathogens.
Mobile app uses ML algorithms to identify potential diseases of affected crops

Weed Detection and Management



ML models differentiate between crops and weeds in images, enabling automated weed detection. This information can be used to implement targeted weed management strategies, reducing the need for herbicides.

Update Field Data



Seasonwise Field Data Updation by covering large areas daily in terms of Unmanned Aerial Vehicle
Hyperspectral and multispectral sensors detect subtle changes in plant health that may indicate the presence of diseases.
Satellite and drone-based remote sensing technologies monitor large agricultural areas to detect changes in vegetation health, helping to identify potential disease outbreaks.

Improve Crop Yields



Predict crop yields based on weather conditions, soil health, and historical yield data to make informed decisions regarding planting, harvesting, and resource allocation.

Meet Your AI for Agriculture Objectives & Needs