Mohamed Y. Eldib
Ghent University
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Publication
Featured researches published by Mohamed Y. Eldib.
Sensors | 2014
Nyan Bo Bo; Francis Deboeverie; Mohamed Y. Eldib; Junzhi Guan; Xingzhe Xie; Jorge Niño; Dirk Van Haerenborgh; Maarten Slembrouck; Samuel Van de Velde; Heidi Steendam; Peter Veelaert; Richard P. Kleihorst; Hamid K. Aghajan; Wilfried Philips
This paper proposes an automated system for monitoring mobility patterns using a network of very low resolution visual sensors (30 × 30 pixels). The use of very low resolution sensors reduces privacy concern, cost, computation requirement and power consumption. The core of our proposed system is a robust people tracker that uses low resolution videos provided by the visual sensor network. The distributed processing architecture of our tracking system allows all image processing tasks to be done on the digital signal controller in each visual sensor. In this paper, we experimentally show that reliable tracking of people is possible using very low resolution imagery. We also compare the performance of our tracker against a state-of-the-art tracking method and show that our method outperforms. Moreover, the mobility statistics of tracks such as total distance traveled and average speed derived from trajectories are compared with those derived from ground truth given by Ultra-Wide Band sensors. The results of this comparison show that the trajectories from our system are accurate enough to obtain useful mobility statistics.
international conference on image processing | 2014
Mohamed Y. Eldib; Nyan Bo Bo; Francis Deboeverie; Jorge Niño; Junzhi Guan; Samuel Van de Velde; Heidi Steendam; Hamid K. Aghajan; Wilfried Philips
The current multi-camera systems have not studied the problem of person tracking under low resolution constraints. In this paper, we propose a low resolution sensor network for person tracking. The network is composed of cameras with a resolution of 30×30 pixels. The multi-camera system is used to evaluate probability occupancy mapping and maximum likelihood trackers against ground truth collected by ultra-wideband (UWB) testbed. Performance evaluation is performed on two video sequences of 30 minutes. The experimental results show that maximum likelihood estimation based tracker outperforms the state-of-the-art on low resolution cameras.
Journal of Electronic Imaging | 2016
Mohamed Y. Eldib; Francis Deboeverie; Wilfried Philips; Hamid K. Aghajan
Abstract. Recent advancements in visual sensor technologies have made behavior analysis practical for in-home monitoring systems. The current in-home monitoring systems face several challenges: (1) visual sensor calibration is a difficult task and not practical in real-life because of the need for recalibration when the visual sensors are moved accidentally by a caregiver or the senior citizen, (2) privacy concerns, and (3) the high hardware installation cost. We propose to use a network of cheap low-resolution visual sensors (30×30 pixels) for long-term behavior analysis. The behavior analysis starts by visual feature selection based on foreground/background detection to track the motion level in each visual sensor. Then a hidden Markov model (HMM) is used to estimate the user’s locations without calibration. Finally, an activity discovery approach is proposed using spatial and temporal contexts. We performed experiments on 10 months of real-life data. We show that the HMM approach outperforms the k-nearest neighbor classifier against ground truth for 30 days. Our framework is able to discover 13 activities of daily livings (ADL parameters). More specifically, we analyze mobility patterns and some of the key ADL parameters to detect increasing or decreasing health conditions.
Lecture Notes in Computer Science | 2015
Mohamed Y. Eldib; Francis Deboeverie; Wilfried Philips; Hamid K. Aghajan
Nearly half of the senior citizens report difficulty initiating and maintaining sleep. Frequent visits to the bathroom in the middle of the night is considered as one of the major reasons for sleep disorder. This leads to serious diseases such as depression and diabetes. In this paper, we propose to use a network of cheap low-resolution visual sensors 30
international conference on distributed smart cameras | 2015
Mohamed Y. Eldib; Francis Deboeverie; Dirk Van Haerenborgh; Wilfried Philips; Hamid K. Aghajan
international conference on distributed smart cameras | 2014
Xingzhe Xie; Francis Deboeverie; Mohamed Y. Eldib; Wilfried Philips; Hamid K. Aghajan
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ambient intelligence | 2018
Mohamed Y. Eldib; Francis Deboeverie; Wilfried Philips; Hamid K. Aghajan
international conference on distributed smart cameras | 2014
Mohamed Y. Eldib; Wilfried Philips; Hamid K. Aghajan
× 30 pixels for long-term activity analysis of a senior citizen in a service flat. The main focus of our research is on elderly behaviour analysis to detect health deterioration. Specifically, this paper treats the analysis of sleep patterns. Firstly, motion patterns are detected. Then, a rule-based approach on the motion patterns is proposed to determine the wake up time and sleep time. The nightly bathroom visit is identified using a classification-based model. In our evaluation, we performed experiments on 10i¾?months of real-life data. The ground truth is collected from the diaries in which the senior citizen wrote down his sleep time and wake up time. The results show accurate extraction of the sleep durations with an overall Mean Absolute Error MAE of 22.91i¾?min and Spearman correlation coefficient of 0.69. Finally, the nightly bathroom visits analysis indicate sleep disorder in several nights.
international conference on distributed smart cameras | 2014
Mohamed Y. Eldib; Nyan Bo Bo; Francis Deboeverie; Xingzhe Xie; Wilfried Philips; Hamid K. Aghajan
Loneliness is a common condition associated with aging and comes with extreme health consequences including decline in physical and mental health, increased mortality and poor living conditions. Detecting and assisting lonely persons is therefore important-especially in the home environment. The current studies analyse the Activities of Daily Living (ADL) usually with the focus on persons living alone, e.g., to detect health deterioration. However, this type of data analysis relies on the assumption of a single person being analysed, and the ADL data analysis becomes less reliable without assessing socialization in seniors for health state assessment and intervention. In this paper, we propose a network of cheap low-resolution visual sensors for the detection of visitors. The visitor analysis starts by visual feature extraction based on foreground/background detection and morphological operations to track the motion patterns in each visual sensor. Then, we utilize the features of the visual sensors to build a Hidden Markov Model (HMM) for the actual detection. Finally, a rule-based classifier is used to compute the number and the duration of visits. We evaluate our framework on a real-life dataset of ten months. The results show a promising visit detection performance when compared to ground truth.
international conference on distributed smart cameras | 2016
Mohamed Y. Eldib; Francis Deboeverie; Wilfried Philips; Hamid K. Aghajan
Behavior analysis plays an important role in the field of Smart Homes (SH). In this work, we present to analyze the behavior patterns of the elderly person using statistical features extracted from the tracking results of a very low-resolution camera system. Firstly, the low-precision tracking results are prepossessed to remove the bad tracks, which do not fit the walking speed of human beings. The good tracks are classified into walking tracks and staying tracks according to the position variance of their tracking points. Secondly, the statistical features, such as the time of getting up and going to bed, the walking distance over a day, and the number of tracks detected at specific area, are extracted as the description of the behaviors at each day. At last, these features are clustered into different behaviors patterns using a Random Sample Consensus (RANSAC)-principle method. The initial results demonstrates that our method is able to detect the behavior patterns.