Search results for "Anomaly detection"

showing 10 items of 82 documents

Anomaly Detection in Dynamic Social Systems Using Weak Estimators

2009

Anomaly detection involves identifying observationsthat deviate from the normal behavior of a system. One ofthe ways to achieve this is by identifying the phenomena thatcharacterize “normal” observations. Subsequently, based on thecharacteristics of data learned from the “normal” observations,new observations are classified as being either “normal” or not.Most state-of-the-art approaches, especially those which belongto the family parameterized statistical schemes, work under theassumption that the underlying distributions of the observationsare stationary. That is, they assume that the distributions thatare learned during the training (or learning) phase, thoughunknown, are not time-varyin…

education.field_of_studybusiness.industryComputer sciencePopulationEstimatorMachine learningcomputer.software_genreOutlierAnomaly detectionArtificial intelligenceData miningAnomaly (physics)businesseducationcomputer2009 International Conference on Computational Science and Engineering
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On data mining applications in mobile networking and network security

2014

geneettiset algoritmitdata miningmatkaviestinverkotanomaly detectionlangaton tiedonsiirtomachine learningkoneoppiminenclassificationalgoritmitmobile datanetwork securityklusterianalyysirelay stationtiedonlouhintatietoturvakyberturvallisuuslangattomat verkotclustering
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A method for anomaly detection in hyperspectral images, using deep convolutional autoencoders

2017

Menetelmä poikkeavuuksien havaitsemiseen hyperspektrikuvista käyttäen syviä konvolutiivisia autoenkoodereita. Poikkeavuuksien havaitseminen kuvista, erityisesti hyperspektraalisista kuvista, on hankalaa. Kun ongelmaan yhdistetään ennalta tuntematon data ja poikkeavuudet, muodostuu ongelma vielä laajemmaksi. Spektraalisten poikkeavuuksien havaitsemiseen on kehitetty useita eri menetelmiä, mutta spatiaalisten poikkeavuuksien havaitseminen on huomattavasti hankalempaa. Tässä työssä esitellään uudenkaltainen menetelmä sekä spatiaalisten että spektraalisten poikkeavuuksien samanaikaiseen havaitsemiseen. Menetelmä on suunniteltu erityisesti spektraaliselle datalle, mutta soveltuu myös perinteisil…

hyperspectral imagesautoencoderautoenkooderithdbscanSCAEconvolutional neural networkdeep learninghavaitseminenneuroverkotanomaly detectionconvolutional autoencodermachine learningkoneoppiminenpoikkeavuuskonvoluutioälytekniikkaCAEhyperspektrikuvatautoenkooderi
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On Application-Layer DDoS Attack Detection in High-Speed Encrypted Networks

2016

Application-layer denial-of-service attacks have become a serious threat to modern high-speed computer networks and systems. Unlike network-layer attacks, application-layer attacks can be performed by using legitimate requests from legitimately connected network machines which makes these attacks undetectable for signature-based intrusion detection systems. Moreover, the attacks may utilize protocols that encrypt the data of network connections in the application layer making it even harder to detect attacker’s activity without decrypting users network traffic and violating their privacy. In this paper, we present a method which allows us to timely detect various applicationlayer attacks ag…

intrusion detectiondenial of servicenetwork securitytraffic clusteringanomaly detection
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Knowledge discovery using diffusion maps

2013

knowledge discoveryskientometriikkaanalyysimenetelmätdata miningvalvontajärjestelmätanomaly detectionkoneoppiminentoiminnallinen magneettikuvausdatabig datamanifold learningalgoritmitdiffusion mapstiedonlouhintateollisuuskyberturvallisuusclusteringdimensionality reduction
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Anomaly detection in wireless sensor networks

2016

Wireless Sensor Network can be defined as a network of integrated sensors responsible for environmental sensing, data processing and communication with other sensors and the base station while consuming low power. Today, WSNs are being used in almost every part of life. The cost effective nature of WSNs is beneficial for environmental monitoring, production facilities and security monitoring. At the same time WSNs are vulnerable to security breaches, attacks and information leakage. Anomaly detection techniques are used to detect such activities over the network that do not conform to the normal behavior of the network communication. Supervised Machine learning approach is one way to detect…

koneoppiminensensoriverkotsupervised machine learningWireless sensor networksanomaly detection
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Minimal learning machine in anomaly detection from hyperspectral images

2020

Abstract. Anomaly detection from hyperspectral data needs computationally efficient methods to process the data when the data gathering platform is a drone or a cube satellite. In this study, we introduce a minimal learning machine for hyperspectral anomaly detection. Minimal learning machine is a novel distance-based classification algorithm, which is now modified to detect anomalies. Besides being computationally efficient, minimal learning machine is also easy to implement. Based on the results, we show that minimal learning machine is efficient in detecting global anomalies from the hyperspectral data with low false alarm rate.

lcsh:Applied optics. PhotonicsComputer sciencehyperspectral imagingData needs0211 other engineering and technologies02 engineering and technologylcsh:TechnologyConstant false alarm rateremote sensing0202 electrical engineering electronic engineering information engineering021101 geological & geomatics engineeringData collectionlcsh:Tbusiness.industryspektrikuvausProcess (computing)lcsh:TA1501-1820Hyperspectral imagingPattern recognitionminimal learning machineDroneanomaly detectionkoneoppiminenMinimal learning machinelcsh:TA1-2040020201 artificial intelligence & image processingAnomaly detectionArtificial intelligencekaukokartoituslcsh:Engineering (General). Civil engineering (General)business
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Intrusion detection applications using knowledge discovery and data mining

2014

pääsynvalvontaintrusion detectionknowledge discoverydata miningvalvontajärjestelmätanomaly detectionbig dataalgoritmitklusterianalyysitietoturvatiedonlouhintakyberturvallisuusverkkohyökkäyksetdimensionality reductionclustering
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Anomaly and Change Detection in Remote Sensing Images

2021

Earth observation through satellite sensors, models and in situ measurements provides a way to monitor our planet with unprecedented spatial and temporal resolution. The amount and diversity of the data which is recorded and made available is ever-increasing. This data allows us to perform crop yield prediction, track land-use change such as deforestation, monitor and respond to natural disasters and predict and mitigate climate change. The last two decades have seen a large increase in the application of machine learning algorithms in Earth observation in order to make efficient use of the growing data-stream. Machine learning algorithms, however, are typically model agnostic and too flexi…

remote sensingmachine learning:CIENCIAS TECNOLÓGICAS [UNESCO]UNESCO::CIENCIAS TECNOLÓGICASchange detectionanomaly detection
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Detecting cellular network anomalies using the knowledge discovery process

2015

Analytical companies unanimously forecast the exponential growth of mobile traffic consumption over the next five years. The densification of a network structure with small cells is regarded as a key solution to meet growing capacity demands. The manual management of a multi-layer network is a very expensive, error prone, and sluggish process. Hence, the automation of the whole life cycle of network operation is highly anticipated. To this aim 3GPP introduces a self-management concept referred to as SON. It is envisioned that SON updates information concerning the latest network conditions through the MDT mecha- nism. MDT enables a network operator to collect radio and service quality measurem…

self-healKDDtoimintahäiriötviatrakenteettomat verkotdata miningtietoliikenneverkotmatkaviestinverkotradio networksanomaly detectionself-organizing networksLTEMDTcell outagehäiriötradioverkot3G-tekniikkasimulointitiedonlouhintalangattomat verkot
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