398 research outputs found
Vehicle Type Detection by Convolutional Neural Networks
In this work a new vehicle type detection procedure for traffic surveillance videos is proposed. A Convolutional Neural Network is
integrated into a vehicle tracking system in order to accomplish this task.
Solutions for vehicle overlapping, differing vehicle sizes and poor spatial resolution are presented. The system is tested on well known benchmarks, and multiclass recognition performance results are reported. Our proposal is shown to attain good results over a wide range of difficult
situations.Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tech
Road pollution estimation using static cameras and neural networks
Este artículo presenta una metodología para estimar la contaminación en carreteras mediante el análisis de secuencias de video de tráfico. El objetivo es aprovechar la gran red de cámaras IP existente en el sistema de carreteras de cualquier estado o país para estimar la contaminación en cada área. Esta propuesta utiliza redes neuronales de aprendizaje profundo para la detección de objetos, y un modelo de estimación de contaminación basado en la frecuencia de vehículos y su velocidad. Los experimentos muestran prometedores resultados que sugieren que el sistema se puede usar en solitario o combinado con los sistemas existentes para medir la contaminación en carreteras.Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tech
A new self-organizing neural gas model based on Bregman divergences
In this paper, a new self-organizing neural gas model that we call Growing Hierarchical Bregman Neural
Gas (GHBNG) has been proposed. Our proposal is based on the Growing Hierarchical Neural Gas (GHNG) in which Bregman divergences are incorporated in order to compute the winning neuron. This model has been applied to anomaly detection in video sequences together with a Faster R-CNN as an object detector module. Experimental results not only confirm the effectiveness of the GHBNG for the detection of anomalous object in video sequences but also its selforganization
capabilities.Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tec
Blood Cell Classification Using the Hough Transform and Convolutional Neural Networks
https://doi.org/10.1007/978-3-319-77712-2_62The detection of red blood cells in blood samples can be crucial for the disease detection in its early stages. The use of image
processing techniques can accelerate and improve the effectiveness and efficiency of this detection. In this work, the use of the Circle Hough transform for cell detection and artificial neural networks for their identification as a red blood cell is proposed. Specifically, the application of neural networks (MLP) as a standard classification technique with (MLP) is compared with new proposals related to deep learning such as convolutional neural networks (CNNs). The different experiments carried out reveal the high classification ratio and show promising results after the application of the CNNs.Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tech
Pixel Features for Self-organizing Map Based Detection of Foreground Objects in Dynamic Environments
Among current foreground detection algorithms for video sequences, methods based on self-organizing maps are obtaining a greater relevance. In this work we propose a probabilistic self-organising map based model, which uses a uniform distribution to represent the foreground. A suitable set of characteristic pixel features is chosen to train the probabilistic model. Our approach has been compared to some competing methods on a test set of benchmark videos, with favorable results.Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tech
Influence of the electric energy non-regulated market in the intensive aquaculture plants associated to cooling effluents
En este trabajo se analiza el efecto que la liberalización del mercado eléctrico tiene
sobre la variación de los regímenes de temperatura del agua en plantas de acuicultura
intensiva que aprovechan los efluentes de refrigeración de centrales generadoras de electricidad.
Para ello se han utilizado datos de una instalación dedicada al engorde de anguilas
europeas, la cual toma el agua caliente del efluente de refrigeración de la Central Térmica
de Puente Nuevo (Córdoba). Los resultados indican que la liberalización del
mercado del sector eléctrico tiene una influencia significativa sobre la forma y cantidad
de energía generada por la Central Térmica, y por consiguiente sobre el régimen termal
del efluente de refrigeración. Los niveles de temperatura en el interior de la instalación
son dependientes asimismo de la temperatura del agua en el efluente de refrigeración,
estimándose la disminución de los índices de crecimiento debidos a este factor en un 5%.In this paper, the effect of the electric energy non-regulated market in the water
thermal regimes variation of intensive fishfarms that use the heated water for cooling of
power plants is analysed. This way, data of aneel intensive rearing system was used. In
this fishfarm the heated water is drawn from the cooling effluent of the Puente Nuevo
power plant (Córdoba). The results show that the non-regulated market has a significant effect on the form and amount of generated energy and the thermal regime of the cooling
effluent. The temperature levels in the fishfarm depend of the water temperature of
cooling effluent, being estimated the decrease of the growth index in 5%
Color Space Selection for Self-Organizing Map Based Foreground Detection in Video Sequences
The selection of the best color space is a fundamental task in detecting foreground objects on scenes. In many situations, especially on dynamic backgrounds, neither grayscale nor RGB color spaces represent the best solution to detect foreground objects. Other standard color spaces,
such as YCbCr or HSV, have been proposed for background modeling in the literature; although the best results have been achieved using diverse color spaces according to the application, scene, algorithm, etc. In this work, a color space and color component weighting selection process is proposed to detect foreground objects in video sequences using self-organizing maps. Experimental results are also provided using well known benchmark videos.Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tech
Neural Controller for PTZ cameras based on nonpanoramic foreground detection
Abstract—In this paper a controller for PTZ cameras based on an unsupervised neural network model is presented. It takes advantage of the foreground mask generated by a nonparametric foreground detection subsystem. Thus, our aim is
to optimize the movements of the PTZ camera to attain the maximum coverage of the observed scene in presence of moving objects. A growing neural gas (GNG) is applied to enhance the representation of the foreground objects. Both qualitative and quantitative results are reported using several widely used datasets, which demonstrate the suitability of our approach.Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tech
Panoramic Background Modeling for PTZ Cameras with Competitive Learning Neural Networks
The construction of a model of the background of a
scene still remains as a challenging task in video surveillance systems, in particular for moving cameras. This work presents a novel approach for constructing a panoramic background model based on competitive learning neural networks and a subsequent piecewise linear interpolation by Delaunay triangulation. The approach can handle arbitrary camera directions and zooms for a Pan-Tilt-Zoom (PTZ) camera-based surveillance system. After testing the proposed approach on several indoor sequences, the results demonstrate that the proposed method is effective and suitable to use for real-time video surveillance applications.Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tech
Influence of pH on properties of ZnS thin films deposited on SiO2 substrate by chemical bath deposition
Artículo Publicado en Revista indexadaThis work focuses on the study of zinc sulfide (ZnS) thin films prepared by chemical bath deposition. The effect of the pH ranging from 10.0 to 10.75 on quality of ZnS thin films on SiO2 substrate is investigated. The effect of pH on the surface showed that the variation of pH has a significant effect on the morphology of the ZnS thin films. The sample with pH value of 10.50 was uniform, free of agglomerates with band gap energy about 3.67 eV. The resistivity of ZnS thin films on SiO2 substrate with different pH value were about 107 Ω cm.DGAPA-PAPIIT IN108613-2 - PROYECTO UNA
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