Accurate estimation of the biomass of roadside grasses plays a significant role in applications such as fire-prone region identification. Current solutions heavily depend on field surveys, remote sensing measurements and image processing using reference markers, which often demand big investments of time, effort and cost. This paper proposes Density Weighted Connectivity of Grass Pixels (DWCGP) to automatically estimate grass biomass from roadside image data. The DWCGP calculates the length of continuously connected grass pixels along a vertical orientation in each image column, and then weights the length by the grass density in a surrounding region of the column. Grass pixels are classified using feedforward artificial neural networks and...
The objective of this study is to investigate the potential of novel neural network architectures fo...
International audienceTo evaluate the impact of weeds on crops, precise identification and early pre...
A texture-based weed classification method was developed. The method consisted of a low-level Gabor ...
Automatically monitoring roadside fire risk plays a significant role in ensuring road safety by redu...
Photogrammetry is an image analysis that produces a 3D model of on object using a set of images take...
Silage is the main feed in milk and ruminant meat production in Northern Europe. Novel drone-based r...
This paper presents the work done in an attempt to develop an automatic computer vision system for t...
Our aim in this project was to develop a tool for measuring ryegrass morphological data larger pheno...
© 2016 IEEE.Roadside vegetation classification has recently attracted increasing attention, due to i...
Ground cover and surface vegetation information are key inputs to wildfire propagation models and ar...
Field-based, rapid, and non-destructive techniques for assessing plant productivity are needed to ac...
Vegetation classification from satellite and aerial images is a common research area for fire risk a...
The dryness of peatlands is influenced by the density of vegetation. If peatlands are dry, they beco...
International audienceIn many regions, a decrease in grasslands and change in their management, whic...
A texture–based weed classification method was developed. The method consisted of a low–level Gabor ...
The objective of this study is to investigate the potential of novel neural network architectures fo...
International audienceTo evaluate the impact of weeds on crops, precise identification and early pre...
A texture-based weed classification method was developed. The method consisted of a low-level Gabor ...
Automatically monitoring roadside fire risk plays a significant role in ensuring road safety by redu...
Photogrammetry is an image analysis that produces a 3D model of on object using a set of images take...
Silage is the main feed in milk and ruminant meat production in Northern Europe. Novel drone-based r...
This paper presents the work done in an attempt to develop an automatic computer vision system for t...
Our aim in this project was to develop a tool for measuring ryegrass morphological data larger pheno...
© 2016 IEEE.Roadside vegetation classification has recently attracted increasing attention, due to i...
Ground cover and surface vegetation information are key inputs to wildfire propagation models and ar...
Field-based, rapid, and non-destructive techniques for assessing plant productivity are needed to ac...
Vegetation classification from satellite and aerial images is a common research area for fire risk a...
The dryness of peatlands is influenced by the density of vegetation. If peatlands are dry, they beco...
International audienceIn many regions, a decrease in grasslands and change in their management, whic...
A texture–based weed classification method was developed. The method consisted of a low–level Gabor ...
The objective of this study is to investigate the potential of novel neural network architectures fo...
International audienceTo evaluate the impact of weeds on crops, precise identification and early pre...
A texture-based weed classification method was developed. The method consisted of a low-level Gabor ...