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Augmented Vision and Reality 6 Vijayan K. Asari Editor Wide Area Surveillance Real-time Motion Detection Systems Augmented Vision and Reality Volume 6 Series Editors Riad I. Hammoud, Kokomo, IN, USA Lawrence B. Wolff, New York, NY, USA For furthervolumes: http://www.springer.com/series/8612 Vijayan K. Asari Editor Wide Area Surveillance Real-time Motion Detection Systems 123 Editor Vijayan K.Asari Electrical andComputer Engineering Universityof Dayton Dayton,OH USA ISSN 2190-5916 ISSN 2190-5924 (electronic) ISBN 978-3-642-37840-9 ISBN 978-3-642-37841-6 (eBook) DOI 10.1007/978-3-642-37841-6 SpringerHeidelbergNewYorkDordrechtLondon LibraryofCongressControlNumber:2013950723 (cid:2)Springer-VerlagBerlinHeidelberg2014 Thisworkissubjecttocopyright.AllrightsarereservedbythePublisher,whetherthewholeorpartof the material is concerned, specifically the rights of translation, reprinting, reuse of illustrations, recitation,broadcasting,reproductiononmicrofilmsorinanyotherphysicalway,andtransmissionor informationstorageandretrieval,electronicadaptation,computersoftware,orbysimilarordissimilar methodology now known or hereafter developed. Exempted from this legal reservation are brief excerpts in connection with reviews or scholarly analysis or material supplied specifically for the purposeofbeingenteredandexecutedonacomputersystem,forexclusiveusebythepurchaserofthe work. Duplication of this publication or parts thereof is permitted only under the provisions of theCopyright Law of the Publisher’s location, in its current version, and permission for use must always be obtained from Springer. Permissions for use may be obtained through RightsLink at the CopyrightClearanceCenter.ViolationsareliabletoprosecutionundertherespectiveCopyrightLaw. The use of general descriptive names, registered names, trademarks, service marks, etc. in this publicationdoesnotimply,evenintheabsenceofaspecificstatement,thatsuchnamesareexempt fromtherelevantprotectivelawsandregulationsandthereforefreeforgeneraluse. While the advice and information in this book are believed to be true and accurate at the date of publication,neithertheauthorsnortheeditorsnorthepublishercanacceptanylegalresponsibilityfor anyerrorsoromissionsthatmaybemade.Thepublishermakesnowarranty,expressorimplied,with respecttothematerialcontainedherein. Printedonacid-freepaper SpringerispartofSpringerScience+BusinessMedia(www.springer.com) Preface Wide area surveillance refers to an automated monitoring process that involves data acquisition, analysis, and interpretation for understanding object behaviors. Automated surveillance systems are mostly used for military, law enforcement, and commercial applications. Sensors of different types and characteristics in surface-basedoraerial-basedplatformsareusedfortheacquisitionofdataoflarge areas sometimes covering several square miles. Intelligent visual surveillance is becoming more popular in applications such as human identification, activity recognition, behavior analysis, anomaly detection, alarming, etc. Detection, tracking, and identification of moving objects in a wide area surveillance envir- onment have been an active research area in the past few decades. Object motion analysis and interpretation are integral components for activity monitoring and situationalawareness.Real-timeperformanceofthesedataanalysistasksinavery wide field of view is an important need for monitoring in security and law enforcement applications. This edited book, Wide Area Surveillance: Real-time Motion Detection Systems, aims to present a few selected state-of-the-art research and development outcomespertainingtoreal-worldapplications.ItispartofaSpringerBookseries titled Augmented Vision and Reality which has been initiated by Dr. Riad Ham- moud. This book includes a wide variety of active research topics which are very relevanttowideareasurveillanceforsceneanalysisandunderstanding.Themajor research areas addressed in the 10 chapters of this book are background elim- ination, shadow detection, moving object detection and tracking, human activity recognition and crowd monitoring, person identification, networked camera con- trols, and target recognition in multi-spectral and hyper-spectral imagery. The first part of the book covers research on wide area surveillance data ana- lysis for background subtraction, moving cast shadow detection, and moving object detection and tracking. The chapter on Background Subtraction by Ahmed ElgammalofRutgersUniversitypresentsdetaileddescriptionofvariousstatistical approaches to model scene background. An extensive review of the concept and the practice in background subtraction is provided in this chapter to establish the need for this important research activity in wide area surveillance and scene understanding. Several basic statistical background subtraction models such as v vi Preface parametric Gaussian models and nonparametric models are presented. It also discussestheissueofshadowsuppressionforhumanmotionanalysisapplications and different approaches and tradeoffs for background maintenance. Many recent developments in background subtraction paradigm are also addressed in this chapter. The chapter on Moving Cast Shadows Detection by Ariel Amato, Ivan Huerta, Mikhail G. Mozerov, F. Xavier Roca, and Jordi González of Universitat Autò- noma de Barcelona reviews several shadow detection methods as well as their taxonomiesrelatedtochangedetection,movingobjectdetection,scenematching, and visual surveillance in a background subtraction context. Detection of moving cast shadows is an important research activity in a broad range of vision-based surveillance applications as it helps in improving the performance of long-range objectclassificationtasks.Severalshadowdetectionmethodsarepresentedinthis chapter to work with static images and with image sequences. The detected sha- dow regions in an image can be exploited to obtain geometric and semantic cues about shape and position of its casting object and localization of the light source. Theshadowsinvideosequencescanbeexploitedfordetectingchangesinascene and object matching. The effect of shadows on the shape and color of the target object which may affect the performance of scene analysis and interpretation is also discussed in this chapter. The chapter on Object Detection and Tracking in Wide Area Motion Imagery by Varun Santhaseelan and Vijayan K. Asari of UniversityofDaytonpresentsnewmethodologiesformovingobjectdetectionand feature-basedobjecttrackinginlowresolutionvideothatcanworkwellinvarying lighting conditions as well as for very small objects like pedestrians in an aerial image.Thebasicphilosophyemployedinthedevelopmentofthenewalgorithmis thattheentireinformationavailableinanobjectofinteresthastobeutilizedinthe detection and tracking processes. A dense version of a localized histogram of gradients on the difference images forms the feature set for representing a low resolutionobjectregion. Theeffectivenessofanonlinearimageenhancementand super-resolution algorithms in relationship with tracking in shadows is also pre- sented in this chapter. Thesecondpartofthebookcoversresearchanddevelopmentofalgorithmsfor human activity recognition, autonomous crowd monitoring, and human identifi- cationinawideareasurveillanceenvironment.ThechapterontheRecognitionof Complex Human Activities in a Crowd Context by Wongun Choi and Silvio Savarese of University of Michigan examines the problem of classification of collective human activities from video sequences. The presence of the coherent behavioramongindividualsinaspatialandtemporalneighborhoodisdefinedasa collectiveactivityinthischapter.Collectiveactivitiessuchasqueuinginalineor talkingaredefinedbyobservingtheinteractionsofnearbyindividualsintimeand space. Several recent methods for analyzing collective activities through the concept of crowd context are presented in this chapter. Various solutions for modeling the crowd context are also discussed along with demonstration of the Preface vii flexibility and scalability of the new framework on several datasets of collective human activities. The chapter on Autonomous Cognitive Crowd Monitoring by Simone Chiappino, Lucio Marcenaro, Pietro Morerio, and Carlo Regazzoni of University of Genoa presents an event-based dynamic Bayesian network that can switch among alternative Bayesian filtering and control lower level modules to capture adaptive reactions of human operators. An intelligent video surveillance system should be able to represent complex situations that describe actions and activities of humans in a dynamically varying background. Human behavior analysis is an important research activity in cognitive crowd monitoring. A cog- nitive decision making process includes an automatic support to human decisions based on object detection, tracking, and situation assessment in the environment. The new event-based switched dynamic Bayesian network presented in this chapter can be used to represent and anticipate possible actions and activities within the intelligent video surveillance context. This can also interact with an active visual simulator of crowd situations. The chapter on Unified Representation of Human Faces for Recognition of Individuals in Surveillance Videos by Le An, Bir Bhanu, and Songfan Yang of University of California, Riverside uses a novel image representation of a unified faceimagewhichissynthesizedfrommultiplecameravideofeeds.Lowqualityof the probe data in terms of resolution, noise, blurriness, and varying lighting conditionsandthevariationsinfaceposesmaketherecognitionofindividualsina video surveillance environment more difficult and less accurate in real-world surveillance video data captured in a multi-camera network. The unified face image representation warps the probe frames from different cameras toward a template frontal face which then generate a frontal view of the subject that incorporates information from different cameras. The unified face image representation framework presented in this chapter is a generalized approach which can be adapted to any multi-camera video-based face recognition system that uses any face feature descriptors and classifiers. The chapter on Person Re-identification in Wide Area Camera Networks by Shishir K. Shah and Apurva Bedagkar-Gala of University of Houston considers the context of con- sistentpeopletrackingovermultiplecamerasinordertofacilitatetheestimationof theglobaltrajectoryofapersonoverthecameranetwork.Personre-identification is a fundamental task in wide area surveillance for multi-camera tracking and the subsequent analysis of long-term activities and behaviors of people in the scene. Theappearanceofanindividualinasurveillanceenvironmentmaybeaffectedby varying background lighting, poses, and orientations, and camera to person dis- tance. These cause the deterioration of accuracies in feature extraction and clas- sification processes. This chapter discusses these issues and presents a re- identification model that works well in such challenging conditions. A multi- parametric model and its effectiveness for person re-identification are also pre- sented in this chapter. The third part of the book covers research on navigation aid for unmanned air systems,automatictargetrecognitiononmulti-spectralandhyper-spectralimagery, and distributed sensor data processing. The chapter on Opportunities and viii Preface Challenges of Terrain Aided Navigation Systems for Aerial Surveillance by UnmannedAerialVehiclesbySamilTemelandNumanUnaldiofTurkishAirForce Academypresentsthedevelopmentofaterrainaidednavigationsystemanditsuse asatest-bedforthedesignofanautonomousnavigationsystem.Unmannedaerial vehiclesarenowbecomingpopularinmilitaryandciviliansurveillanceapplications as they provide more accurate, inexpensive, and durable information than ground surveillance systems. Unmanned aerial surveillance systems gather data using various sensors equipped on them. Most of the current unmanned aerial systems depend on satellite-based navigation systems which are likely to be jammed in militaryfields. Theterrainaidednavigationsystem presentedinthischapter pro- vides position estimates relative to known terrains by utilizing the height values fromthesurfacewiththehelpofactiverangesensorswhicharethenmatchedwithin a terrain digital elevation map. This chapter also summarizes some of the design objectivesforunmannedaerialvehicles-basedsurveillanceposts. The chapter on Automatic Target Recognition in Multi-Spectral and Hyper- Spectral Imagery by Mohammad S. Alam and Adel Sakla of University of South Alabama discusses the one-dimensional spectral fringe-adjusted joint transform correlation-based technique for detecting very small targets involving only a few pixels in multi-spectral and hyper-spectral imagery. The joint transform correla- tion of the spectral signatures from the unknown hyper-spectral imagery with the reference signature can detect bothsingle and multiple desired targets in constant timewhileaccommodatingthein-planeandout-of-planedistortions.Theproposed joint transform correlation technique is also applied to the discrete wavelet transform coefficients of the multi-spectral and hyper-spectral data in order to improvethedetectionperformance.Thischapteralsopresentstheeffectivenessin performance of the proposed method in some real-life hyper-spectral image data cubes.ThechapteronDistributedEstimationandControlinCameraNetworksby A. Kamal, C. Ding, A. Morye, J. A. Farrell, A. Roy-Chowdhury of University of California,Riversidereviewssomeofthestate-of-the-arttechniquesindistributed computervisionalgorithmsrelatedtodistributedestimationanddistributedcontrol scenarios.Distributedprocessingisanecessityinseveralapplicationdomainssuch asnationalsecurity,homemonitoring,andenvironmentalmonitoringwherelarge- scale camera networks are deployed. The limitations of setting up a substantial communication infrastructure beforehand andthe possible mobilityof the sensors may also necessitate a distributed processing environment. The basic consensus algorithms and analysis of their applicability in camera networks are discussed in the distributed estimation section and presents some modifications that would consider the constraints posed by vision sensors. A review of game-theoretic cooperative control algorithms is presented in the distributed control section and proposes how they can be adapted for active sensing in a camera network that leads to an integrated sensing and control paradigm. The Editor and the Authors of this book believe that it provides a good source of information and references for academic and industrial researchers, profes- sionals in intelligence, surveillance and reconnaissance (ISR) community, and graduate and senior undergraduate students for conducting wide area image Preface ix analysis and scene understanding research. The Editor thanks all the Authors for their contributions, Dr. Riad Hammoud for proposing this project, and the reviewers for their invaluable service in making this project a great success. October 2012 Vijayan K. Asari Contents Background Subtraction: Theory and Practice. . . . . . . . . . . . . . . . . . 1 Ahmed Elgammal Moving Cast Shadows Detection Methods for Video Surveillance Applications. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 23 Ariel Amato, Ivan Huerta, Mikhail G. Mozerov, F. Xavier Roca and Jordi Gonzàlez Moving Object Detection and Tracking in Wide Area Motion Imagery . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 49 Varun Santhaseelan and Vijayan K. Asari Recognizing Complex Human Activities via Crowd Context . . . . . . . . 71 Wongun Choi and Silvio Savarese Event-Based Switched Dynamic Bayesian Networks for Autonomous Cognitive Crowd Monitoring . . . . . . . . . . . . . . . . . . 93 Simone Chiappino, Lucio Marcenaro, Pietro Morerio and Carlo Regazzoni Unified Face Representation for Individual Recognition in Surveillance Videos. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 123 Le An, Bir Bhanu and Songfan Yang Person Re-identification in Wide Area Camera Networks. . . . . . . . . . 137 Shishir K. Shah and Apurva Bedagkar-Gala Opportunities and Challenges of Terrain Aided Navigation Systems for Aerial Surveillance by Unmanned Aerial Vehicles. . . . . . . . . . . . . 163 Samil Temel and Numan Unaldi xi

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