In this study we propose a new strategy to perform an object segmentation using a multi neural network approach. We started extending our previously presented object detection method applying a new segment based classification strategy. The result obtained is a segmentation map post processed by a phase that exploits the GrabCut algorithm to obtain a fairly precise and sharp edges of the object of interest in a full automatic way. We tested the new strategy on a clothing commercial dataset obtaining a substantial improvement on the quality of the segmentation results compared with our previous method. The segment classification approach we propose achieves the same improvement on a subset of the Pascal VOC 2011 dataset which is a recent ...
We propose two methods for object segmentation by combining learned shape priors with local features...
This paper introduces an approach for image segmentation by using pulse coupled neural network (PCNN...
Our purpose in this work is to boost the performance of object classifiers learned using the self-tr...
In this study we propose a new strategy to perform an object segmentation using a multi neural netwo...
Abstract: In this study we propose a new strategy to perform an object segmentation using a multi ne...
Abstract. We describe a web application that takes advantage of new computer vision techniques to al...
Abstract: Multiple neural network systems have become popular techniques for tackling complex tasks,...
Multiple neural network systems have become popular techniques for tackling complex tasks, often giv...
Part 11: Web Applications of ANNInternational audienceWe describe a web application that takes advan...
The focus of this thesis is on the emerging technology known as Neural Networks which has recently b...
A fundamental problem, not satisfactory solved for automated visual inspection, is the segmentaiton ...
This paper proposes the object segmentation method using multi-resolution texture analysis. The meth...
Segmentacija slika, zadnjih nekoliko godina, postala je popularna tema s kojom se ljudi u velikom br...
The main aim of this master’s thesis is to get acquainted with the theory of the current segmentatio...
We are interested in inferring object segmentation by leveraging only object class information, and ...
We propose two methods for object segmentation by combining learned shape priors with local features...
This paper introduces an approach for image segmentation by using pulse coupled neural network (PCNN...
Our purpose in this work is to boost the performance of object classifiers learned using the self-tr...
In this study we propose a new strategy to perform an object segmentation using a multi neural netwo...
Abstract: In this study we propose a new strategy to perform an object segmentation using a multi ne...
Abstract. We describe a web application that takes advantage of new computer vision techniques to al...
Abstract: Multiple neural network systems have become popular techniques for tackling complex tasks,...
Multiple neural network systems have become popular techniques for tackling complex tasks, often giv...
Part 11: Web Applications of ANNInternational audienceWe describe a web application that takes advan...
The focus of this thesis is on the emerging technology known as Neural Networks which has recently b...
A fundamental problem, not satisfactory solved for automated visual inspection, is the segmentaiton ...
This paper proposes the object segmentation method using multi-resolution texture analysis. The meth...
Segmentacija slika, zadnjih nekoliko godina, postala je popularna tema s kojom se ljudi u velikom br...
The main aim of this master’s thesis is to get acquainted with the theory of the current segmentatio...
We are interested in inferring object segmentation by leveraging only object class information, and ...
We propose two methods for object segmentation by combining learned shape priors with local features...
This paper introduces an approach for image segmentation by using pulse coupled neural network (PCNN...
Our purpose in this work is to boost the performance of object classifiers learned using the self-tr...