An automatic and effective procedure is proposed for validating the outcome produced by a binary image segmentation method using the CART classification algorithm and a random forests (RF) approach. It is based on criteria measuring the trade-off between classification accuracy, in particular sensitivity of a classifier, and computational complexity expressed in terms of the minimum size of the training set in experiments involving large datasets. An example from classification of botanic seeds illustrates the effectiveness of the proposed approach
<p>A) Individual cell analysis- training sets were built from manually-cropped single cells. An exam...
The three major steps used of the study include (1) processing and segmenting the images, (2) applyi...
We present the segmentation results obtained from our graph-based diffusion process using random wal...
This article proposes a methodology for the numerical validation of image processing algorithms dedi...
Many image segmentation algorithms have been proposed to partition an image into foreground regions ...
Random forest is a popular machine learning algorithm which is made up of an ensemble of decision tr...
This paper reports on recent progress in the development of system to group populations of vegetativ...
A high-throughput plant phenotyping system automatically observes and grows many plant samples. Many...
Random forest is a classification technique widely used in remote sensing. One of its advantages is ...
International audienceWe present a robust and automatic method for evaluating the accuracy of Crop/W...
Enhancement of the Random Forests to segment 3D objects in different 3D medical imaging modalities. ...
High-throughput phenotyping systems provide abundant data for statistical analysis through plant ima...
Luca Frigau Abstract of PhD thesis This dissertation deals with statistical methodologies to apply t...
International audienceIn this report, we present a 3D simulator for the numerical validation of segm...
Crop diseases are a noteworthy risk to sustenance security, however their quick distinguishing proof...
<p>A) Individual cell analysis- training sets were built from manually-cropped single cells. An exam...
The three major steps used of the study include (1) processing and segmenting the images, (2) applyi...
We present the segmentation results obtained from our graph-based diffusion process using random wal...
This article proposes a methodology for the numerical validation of image processing algorithms dedi...
Many image segmentation algorithms have been proposed to partition an image into foreground regions ...
Random forest is a popular machine learning algorithm which is made up of an ensemble of decision tr...
This paper reports on recent progress in the development of system to group populations of vegetativ...
A high-throughput plant phenotyping system automatically observes and grows many plant samples. Many...
Random forest is a classification technique widely used in remote sensing. One of its advantages is ...
International audienceWe present a robust and automatic method for evaluating the accuracy of Crop/W...
Enhancement of the Random Forests to segment 3D objects in different 3D medical imaging modalities. ...
High-throughput phenotyping systems provide abundant data for statistical analysis through plant ima...
Luca Frigau Abstract of PhD thesis This dissertation deals with statistical methodologies to apply t...
International audienceIn this report, we present a 3D simulator for the numerical validation of segm...
Crop diseases are a noteworthy risk to sustenance security, however their quick distinguishing proof...
<p>A) Individual cell analysis- training sets were built from manually-cropped single cells. An exam...
The three major steps used of the study include (1) processing and segmenting the images, (2) applyi...
We present the segmentation results obtained from our graph-based diffusion process using random wal...