Conference
International Symposium on Neural Networks
About: International Symposium on Neural Networks is an academic conference. The conference publishes majorly in the area(s): Artificial neural network & Support vector machine. Over the lifetime, 3876 publications have been published by the conference receiving 18332 citations.
Topics: Artificial neural network, Support vector machine, Time delay neural network, Control theory, Exponential stability
Papers published on a yearly basis
Papers
More filters
••
21 Jun 2017TL;DR: This work proposes a spatiotemporal architecture for anomaly detection in videos including crowded scenes that includes two main components, one for spatial feature representation, and one for learning the temporal evolution of the spatial features.
Abstract: We present an efficient method for detecting anomalies in videos. Recent applications of convolutional neural networks have shown promises of convolutional layers for object detection and recognition, especially in images. However, convolutional neural networks are supervised and require labels as learning signals. We propose a spatiotemporal architecture for anomaly detection in videos including crowded scenes. Our architecture includes two main components, one for spatial feature representation, and one for learning the temporal evolution of the spatial features. Experimental results on Avenue, Subway and UCSD benchmarks confirm that the detection accuracy of our method is comparable to state-of-the-art methods at a considerable speed of up to 140 fps.
360 citations
••
28 May 2006TL;DR: A novel approach to multi-view gender classification considering both shape and texture information to represent facial image, performed by using support vector machines (SVMs), which had been shown to be superior to traditional pattern classifiers in gender classification problem.
Abstract: In this paper, we present a novel approach to multi-view gender classification considering both shape and texture information to represent facial image. The face area is divided into small regions, from which local binary pattern(LBP) histograms are extracted and concatenated into a single vector efficiently representing the facial image. The classification is performed by using support vector machines(SVMs), which had been shown to be superior to traditional pattern classifiers in gender classification problem. The experiments clearly show the superiority of the proposed method over support gray faces on the CAS-PEAL face database and a highest correct classification rate of 96.75% is obtained. In addition, the simplicity of the proposed method leads to very fast feature extraction, and the regional histograms and global description of the face allow for multi-view gender classification.
167 citations
••
30 May 2005TL;DR: Several artificial neural network models with a feed-forward, back-propagation network structure and various training algorithms, developed to forecast daily and monthly river flow discharges in Manwan Reservoir provide better accuracy in forecasting river flow than does the auto-regression time series model.
Abstract: Several artificial neural network (ANN) models with a feed-forward, back-propagation network structure and various training algorithms, are developed to forecast daily and monthly river flow discharges in Manwan Reservoir. In order to test the applicability of these models, they are compared with a conventional time series flow prediction model. Results indicate that the ANN models provide better accuracy in forecasting river flow than does the auto-regression time series model. In particular, the scaled conjugate gradient algorithm furnishes the highest correlation coefficient and the smallest root mean square error. This ANN model is finally employed in the advanced water resource project of Yunnan Power Group.
155 citations
••
28 May 2006TL;DR: The results of two experiments show that the features extracted by LBP operator are discriminative for gender classification and the proposed approach achieves better performance of classification than several others methods.
Abstract: This paper presents a novel approach for gender classification by boosting local binary pattern-based classifiers. The face area is scanned with scalable small windows from which Local Binary Pattern (LBP) histograms are obtained to effectively express the local feature of a face image. The Chi square distance between corresponding Local Binary Pattern histograms of sample image and template is used to construct weak classifiers pool. Adaboost algorithm is applied to build the final strong classifiers by selecting and combining the most useful weak classifiers. In addition, two experiments are made for classifying gender based on local binary pattern. The male and female images set are collected from FERET databases. In the first experiment, the features are extracted by LBP histograms from fixed sub windows. The second experiment is tested on our boosting LBP based method. Finally, the results of two experiments show that the features extracted by LBP operator are discriminative for gender classification and our proposed approach achieves better performance of classification than several others methods.
130 citations