A neural network model called lateral interaction in accumulative computation for detection of non-rigid objects from motion of any of their parts in indefinite sequences of images is presented. Some biological evidences inspire the model. After introducing the model, the complete multi-layer neural architecture is offered in this paper. The architecture consists of four layers that perform segmentation by gray level bands, accumulative charge computation, charge redistribution by gray level bands and moving object fusion. The lateral interaction in accumulative computation associated learning algorithm is also introduced. Some examples that explain the usefulness of the system we propose are shown at the end of this article
To be able to understand the motion of non-rigid objects, techniques in image processing and compute...
In the present paper, we propose a neurally-inspired model of the primate motion processing hierarc...
Abstract. We present a methodology and a neural network architecture for the modeling of low- and mi...
A neural network model called lateral interaction in accumulative computation for detection of non-r...
The problem we are stating is the discrimination of non-rigid objects capable of holding our attenti...
A model for motion detection is presented. In this approach, motion is viewed as a stable pattern pr...
Motion detection is a basic operation in the selection of significant segments of the video signals....
Segmentation of moving objects is an essential component of any vision system. However, its accompli...
International audienceIn this paper, we consider a biologically inspired spiking neural network mode...
To be able to understand the motion of non-rigid objects, techniques in image processing and compute...
This work further develops a neural network model of motion segmentation by visual cortex that was o...
In this paper we present a method for moving objects detection and labeling denominated Lateral Inte...
Abstract- In this paper, a bioinspired neural model for detecting object motion based on retina comp...
Recognizing and categorizing human actions is an important task with applications in various fields ...
Many researchers have explored the relationship between recurrent neural networks and finite state m...
To be able to understand the motion of non-rigid objects, techniques in image processing and compute...
In the present paper, we propose a neurally-inspired model of the primate motion processing hierarc...
Abstract. We present a methodology and a neural network architecture for the modeling of low- and mi...
A neural network model called lateral interaction in accumulative computation for detection of non-r...
The problem we are stating is the discrimination of non-rigid objects capable of holding our attenti...
A model for motion detection is presented. In this approach, motion is viewed as a stable pattern pr...
Motion detection is a basic operation in the selection of significant segments of the video signals....
Segmentation of moving objects is an essential component of any vision system. However, its accompli...
International audienceIn this paper, we consider a biologically inspired spiking neural network mode...
To be able to understand the motion of non-rigid objects, techniques in image processing and compute...
This work further develops a neural network model of motion segmentation by visual cortex that was o...
In this paper we present a method for moving objects detection and labeling denominated Lateral Inte...
Abstract- In this paper, a bioinspired neural model for detecting object motion based on retina comp...
Recognizing and categorizing human actions is an important task with applications in various fields ...
Many researchers have explored the relationship between recurrent neural networks and finite state m...
To be able to understand the motion of non-rigid objects, techniques in image processing and compute...
In the present paper, we propose a neurally-inspired model of the primate motion processing hierarc...
Abstract. We present a methodology and a neural network architecture for the modeling of low- and mi...