Human Activity Recognition in Video Using Diagrammatic Reasoning and QSTR

Human Activity Recognition in Video Using Diagrammatic Reasoning and QSTR PDF Author: Chayanika Deka Nath
Publisher:
ISBN: 9781805458487
Category :
Languages : en
Pages : 0

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Human Activity Recognition in Video Using Diagrammatic Reasoning and QSTR

Human Activity Recognition in Video Using Diagrammatic Reasoning and QSTR PDF Author: Chayanika Deka Nath
Publisher:
ISBN: 9781805458487
Category :
Languages : en
Pages : 0

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Book Description


Recognition of Humans and Their Activities Using Video

Recognition of Humans and Their Activities Using Video PDF Author: Rama Chellappa
Publisher: Morgan & Claypool Publishers
ISBN: 159829007X
Category : Technology & Engineering
Languages : en
Pages : 179

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Book Description
The recognition of humans and their activities from video sequences is currently a very active area of research because of its applications in video surveillance, design of realistic entertainment systems, multimedia communications, and medical diagnosis. In this lecture, we discuss the use of face and gait signatures for human identification and recognition of human activities from video sequences. We survey existing work and describe some of the more well-known methods in these areas. We also describe our own research and outline future possibilities. In the area of face recognition, we start with the traditional methods for image-based analysis and then describe some of the more recent developments related to the use of video sequences, 3D models, and techniques for representing variations of illumination. We note that the main challenge facing researchers in this area is the development of recognition strategies that are robust to changes due to pose, illumination, disguise, and aging. Gait recognition is a more recent area of research in video understanding, although it has been studied for a long time in psychophysics and kinesiology. The goal for video scientists working in this area is to automatically extract the parameters for representation of human gait. We describe some of the techniques that have been developed for this purpose, most of which are appearance based. We also highlight the challenges involved in dealing with changes in viewpoint and propose methods based on image synthesis, visual hull, and 3D models. In the domain of human activity recognition, we present an extensive survey of various methods that have been developed in different disciplines like artificial intelligence, image processing, pattern recognition, and computer vision. We then outline our method for modeling complex activities using 2D and 3D deformable shape theory. The wide application of automatic human identification and activity recognition methods will require the fusion of different modalities like face and gait, dealing with the problems of pose and illumination variations, and accurate computation of 3D models. The last chapter of this lecture deals with these areas of future research.

Human Activity Recognition and Prediction

Human Activity Recognition and Prediction PDF Author: Yun Fu
Publisher: Springer
ISBN: 3319270044
Category : Technology & Engineering
Languages : en
Pages : 179

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Book Description
This book provides a unique view of human activity recognition, especially fine-grained human activity structure learning, human-interaction recognition, RGB-D data based action recognition, temporal decomposition, and causality learning in unconstrained human activity videos. The techniques discussed give readers tools that provide a significant improvement over existing methodologies of video content understanding by taking advantage of activity recognition. It links multiple popular research fields in computer vision, machine learning, human-centered computing, human-computer interaction, image classification, and pattern recognition. In addition, the book includes several key chapters covering multiple emerging topics in the field. Contributed by top experts and practitioners, the chapters present key topics from different angles and blend both methodology and application, composing a solid overview of the human activity recognition techniques.

Human Activity and Behavior Recognition in Videos. A Brief Review

Human Activity and Behavior Recognition in Videos. A Brief Review PDF Author: Amrit Sarkar
Publisher:
ISBN: 9783656691266
Category :
Languages : de
Pages : 20

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Book Description
Seminar paper from the year 2014 in the subject Engineering - Artificial Intelligence, grade: 8.8345, course: B.Tech. Information Technology, language: English, abstract: Understanding human activity and behavior, especially real-time understanding of human activity and behavior in video streams is presently one of the most active areas of research in Computer Vision and Artificial Intelligence. Its purpose is to automatically detect, track and describe human activities in a sequence of image frames. Challenges in this topic of research are numerous and sometimes very difficult to work out. This paper presents a brief review over the overall process of Human Activity and Behavior Recognition both real time and non-real time, and some of the applications present in current world. The main purpose of this survey is to extensively identify some of the existing methods, critically analyze it and acknowledge the work done by researchers in this field so far.

Recognizing Human Activities from Low-resolution Videos

Recognizing Human Activities from Low-resolution Videos PDF Author: Chia-Chih Chen
Publisher:
ISBN:
Category :
Languages : en
Pages : 228

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Book Description
Human activity recognition is one of the intensively studied areas in computer vision. Most existing works do not assume video resolution to be a problem due to general applications of interests. However, with continuous concerns about global security and emerging needs for intelligent video analysis tools, activity recognition from low-resolution and low-quality videos has become a crucial topic for further research. In this dissertation, We present a series of approaches which are developed specifically to address the related issues regarding low-level image preprocessing, single person activity recognition, and human-vehicle interaction reasoning from low-resolution surveillance videos. Human cast shadows are one of the major issues which adversely effect the performance of an activity recognition system. This is because human shadow direction varies depending on the time of the day and the date of the year. To better resolve this problem, we propose a shadow removal technique which effectively eliminates a human shadow cast from a light source of unknown direction. A multi-cue shadow descriptor is employed to characterize the distinctive properties of shadows. Our approach detects, segments, and then removes shadows. We propose two different methods to recognize single person actions and activities from low-resolution surveillance videos. The first approach adopts a joint feature histogram based representation, which is the concatenation of subspace projected gradient and optical flow features in time. However, in this problem, the use of low-resolution, coarse, pixel-level features alone limits the recognition accuracy. Therefore, in the second work, we contributed a novel mid-level descriptor, which converts an activity sequence into simultaneous temporal signals at body parts. With our representation, activities are recognized through both the local video content and the short-time spectral properties of body parts' movements. We draw the analogies between activity and speech recognition and show that our speech-like representation and recognition scheme improves recognition performance in several low-resolution datasets. To complete the research on this subject, we also tackle the challenging problem of recognizing human-vehicle interactions from low-resolution aerial videos. We present a temporal logic based approach which does not require training from event examples. At the low-level, we employ dynamic programming to perform fast model fitting between the tracked vehicle and the rendered 3-D vehicle models. At the semantic-level, given the localized event region of interest (ROI), we verify the time series of human-vehicle spatial relationships with the pre-specified event definitions in a piecewise fashion. Our framework can be generalized to recognize any type of human-vehicle interaction from aerial videos.

Efficient Human Activity Recognition in Large Image and Video Databases

Efficient Human Activity Recognition in Large Image and Video Databases PDF Author:
Publisher:
ISBN:
Category :
Languages : en
Pages : 137

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Analysis of Human-centric Activities in Video Via Qualitative Spatio-temporal Reasoning

Analysis of Human-centric Activities in Video Via Qualitative Spatio-temporal Reasoning PDF Author: Hajar Sadeghi Sokeh
Publisher:
ISBN:
Category :
Languages : en
Pages : 0

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Book Description
Applying qualitative spatio-temporal reasoning in video analysis is now a very active research topic in computer vision and artificial intelligence. Among all video analysis applications, monitoring and understanding human activities is of great interest. Many human activities can be understood by analysing the interaction between objects in space and time. Qualitative spatio-temporal reasoning encapsulates information that is useful for analysing huma-centric videos. This information can be represented in a very compact form involving interactions between objects of interest in the form of qualitative spatio-temporal relationships. This thesis focuses on three different aspects of interpreting human-centric videos; first introducing a representation of interactions between objects of interest, second determining which objects in the scene are relevant to the activity, and third recognising of human actions by applying the proposed representation model between human body joints and body parts. As a first contribution, we present an accurate and comprehensive model for representing several aspects of space over time from videos called "AngledCORE-9", a modified version of CORE-9 (proposed by Cohn et al. [2012]). This model is as efficient as CORE-9 and allows us to extract spatial information with much higher accuracy than previously possible. We evaluate our new knowledge representation method on a real video dataset to perform action clustering. Our next contribution is proposing a model for differentiating relevant from irrelevant objects to the human actions in the videos. The chief issue of recognising different human actions in videos using spatio-temporal features is that there are usually many moving objects in the scene. No existing method can successfully find the involved objects in the activity. The output of our system is a list of tracks for all possible objects in the video with their probabilities for being involved in the activity. The track with the highest probability is most likely to be the object with which the person is interacting. Knowing the involved object(s) in the activities is very advantageous. Since it can be used to improve the human action recognition rate. Finally, instead of looking at human-object interactions, we consider skeleton joints as the points of interest. Working on joints provides more information about how a person is moving to perform the activity. In this part of the thesis, we use videos with human skeletons in 3D captured by Kinect, MSR3D-action dataset. We use our proposed model "AngledCORE-9" to extract features and describe the temporal variation of these features frame by frame. We compare our results against some of the recent works on the same dataset.

Diagrammatic Representation and Inference

Diagrammatic Representation and Inference PDF Author: Peter Chapman
Publisher: Springer
ISBN: 331991376X
Category : Computers
Languages : en
Pages : 831

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Book Description
This book constitutes the refereed proceedings of the 10th International Conference on the Theory and Application of Diagrams, Diagrams 2018, held in Edinburgh, UK, in June 2018. The 26 revised full papers and 28 short papers presented together with 32 posters were carefully reviewed and selected from 124 submissions. The papers are organized in the following topical sections: generating and drawing Euler diagrams; diagrams in mathematics; diagram design, principles and classification; reasoning with diagrams; Euler and Venn diagrams; empirical studies and cognition; Peirce and existential graphs; and logic and diagrams.

Proceedings of International Conference on Computer Vision and Image Processing

Proceedings of International Conference on Computer Vision and Image Processing PDF Author: Balasubramanian Raman
Publisher: Springer
ISBN: 9789811021060
Category : Technology & Engineering
Languages : en
Pages : 0

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Book Description
This edited volume contains technical contributions in the field of computer vision and image processing presented at the First International Conference on Computer Vision and Image Processing (CVIP 2016). The contributions are thematically divided based on their relation to operations at the lower, middle and higher levels of vision systems, and their applications. The technical contributions in the areas of sensors, acquisition, visualization and enhancement are classified as related to low-level operations. They discuss various modern topics – reconfigurable image system architecture, Scheimpflug camera calibration, real-time autofocusing, climate visualization, tone mapping, super-resolution and image resizing. The technical contributions in the areas of segmentation and retrieval are classified as related to mid-level operations. They discuss some state-of-the-art techniques – non-rigid image registration, iterative image partitioning, egocentric object detection and video shot boundary detection. The technical contributions in the areas of classification and retrieval are categorized as related to high-level operations. They discuss some state-of-the-art approaches – extreme learning machines, and target, gesture and action recognition. A non-regularized state preserving extreme learning machine is presented for natural scene classification. An algorithm for human action recognition through dynamic frame warping based on depth cues is given. Target recognition in night vision through convolutional neural network is also presented. Use of convolutional neural network in detecting static hand gesture is also discussed. Finally, the technical contributions in the areas of surveillance, coding and data security, and biometrics and document processing are considered as applications of computer vision and image processing. They discuss some contemporary applications. A few of them are a system for tackling blind curves, a quick reaction target acquisition and tracking system, an algorithm to detect for copy-move forgery based on circle block, a novel visual secret sharing scheme using affine cipher and image interleaving, a finger knuckle print recognition system based on wavelet and Gabor filtering, and a palmprint recognition based on minutiae quadruplets.

Handbook of Cloud Computing

Handbook of Cloud Computing PDF Author: Borko Furht
Publisher: Springer Science & Business Media
ISBN: 1441965246
Category : Computers
Languages : en
Pages : 638

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Book Description
Cloud computing has become a significant technology trend. Experts believe cloud computing is currently reshaping information technology and the IT marketplace. The advantages of using cloud computing include cost savings, speed to market, access to greater computing resources, high availability, and scalability. Handbook of Cloud Computing includes contributions from world experts in the field of cloud computing from academia, research laboratories and private industry. This book presents the systems, tools, and services of the leading providers of cloud computing; including Google, Yahoo, Amazon, IBM, and Microsoft. The basic concepts of cloud computing and cloud computing applications are also introduced. Current and future technologies applied in cloud computing are also discussed. Case studies, examples, and exercises are provided throughout. Handbook of Cloud Computing is intended for advanced-level students and researchers in computer science and electrical engineering as a reference book. This handbook is also beneficial to computer and system infrastructure designers, developers, business managers, entrepreneurs and investors within the cloud computing related industry.