GÉOZIP: monitoring the state of the St. Lawrence shoreline
This is a co-construction project aimed at encouraging the six marine ZIP committe …
Sollio Agriculture
Agrinova
Research and Transfer Assistance Program (RTAP) – Technological Innovation Component
This project is testing a methodology for collecting and processing aerial images to evaluate genetic selection criteria specific to the cultivation of oats (Avena sativa L.). The aim is to create an automated platform for rapid and accurate analysis of crop growth characteristics, with reproducible protocols and artificial intelligence models capable of automatically interpreting drone data.
More specifically, the project aims to:
The methodology consists of three key stages:
Image acquisition by drone is carried out at four strategic periods (bare ground, post-emergence, mid-season and pre-harvest), using high-resolution multispectral and RGB cameras.
Field validation is carried out simultaneously with the drone flights, with precise manual measurements of plant height, lodging (0-9 scale) and maturity date (90% of ears/yellow pods). Data processing involves the creation of orthomosaics, digital surface models and the calculation of vegetation indices.
Analyses use advanced machine learning techniques, including convolutional neural networks (CNNs), random forests and gradient boosting, to develop powerful and robust detection models.
Resources management
This is a co-construction project aimed at encouraging the six marine ZIP committe …
Clients
Multiple
Objective
The first objective of these projects was to review …
Use the non-destructive technique of hyperspectral remote sensing to identify the …
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