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Dive into the research topics where Oresti Banos is active.

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Featured researches published by Oresti Banos.


Sensors | 2014

Window Size Impact in Human Activity Recognition

Oresti Banos; Juan Manuel Galvez; Miguel Damas; Héctor Pomares; Ignacio Rojas

Signal segmentation is a crucial stage in the activity recognition process; however, this has been rarely and vaguely characterized so far. Windowing approaches are normally used for segmentation, but no clear consensus exists on which window size should be preferably employed. In fact, most designs normally rely on figures used in previous works, but with no strict studies that support them. Intuitively, decreasing the window size allows for a faster activity detection, as well as reduced resources and energy needs. On the contrary, large data windows are normally considered for the recognition of complex activities. In this work, we present an extensive study to fairly characterize the windowing procedure, to determine its impact within the activity recognition process and to help clarify some of the habitual assumptions made during the recognition system design. To that end, some of the most widely used activity recognition procedures are evaluated for a wide range of window sizes and activities. From the evaluation, the interval 1–2 s proves to provide the best trade-off between recognition speed and accuracy. The study, specifically intended for on-body activity recognition systems, further provides designers with a set of guidelines devised to facilitate the system definition and configuration according to the particular application requirements and target activities.


Biomedical Engineering Online | 2016

The Mining Minds digital health and wellness framework

Oresti Banos; Muhammad Bilal Amin; Wajahat Ali Khan; Muhammad Afzal; Maqbool Hussain; Byeong Ho Kang; Sungyong Lee

BackgroundThe provision of health and wellness care is undergoing an enormous transformation. A key element of this revolution consists in prioritizing prevention and proactivity based on the analysis of people’s conducts and the empowerment of individuals in their self-management. Digital technologies are unquestionably destined to be the main engine of this change, with an increasing number of domain-specific applications and devices commercialized every year; however, there is an apparent lack of frameworks capable of orchestrating and intelligently leveraging, all the data, information and knowledge generated through these systems.MethodsThis work presents Mining Minds, a novel framework that builds on the core ideas of the digital health and wellness paradigms to enable the provision of personalized support. Mining Minds embraces some of the most prominent digital technologies, ranging from Big Data and Cloud Computing to Wearables and Internet of Things, as well as modern concepts and methods, such as context-awareness, knowledge bases or analytics, to holistically and continuously investigate on people’s lifestyles and provide a variety of smart coaching and support services.ResultsThis paper comprehensively describes the efficient and rational combination and interoperation of these technologies and methods through Mining Minds, while meeting the essential requirements posed by a framework for personalized health and wellness support. Moreover, this work presents a realization of the key architectural components of Mining Minds, as well as various exemplary user applications and expert tools to illustrate some of the potential services supported by the proposed framework.ConclusionsMining Minds constitutes an innovative holistic means to inspect human behavior and provide personalized health and wellness support. The principles behind this framework uncover new research ideas and may serve as a reference for similar initiatives.


Sensors | 2016

On curating multimodal sensory data for personalized health and wellness services

Muhammad Bilal Amin; Oresti Banos; Wajahat Ali Khan; Hafiz Syed Muhammad Bilal; Jingyuk Gong; Dinh-Mao Bui; Shujaat Hussain; Taqdir Ali; Usman Akhtar; TaeChoong Chung; Sungyoung Lee

In recent years, the focus of healthcare and wellness technologies has shown a significant shift towards personal vital signs devices. The technology has evolved from smartphone-based wellness applications to fitness bands and smartwatches. The novelty of these devices is the accumulation of activity data as their users go about their daily life routine. However, these implementations are device specific and lack the ability to incorporate multimodal data sources. Data accumulated in their usage does not offer rich contextual information that is adequate for providing a holistic view of a user’s lifelog. As a result, making decisions and generating recommendations based on this data are single dimensional. In this paper, we present our Data Curation Framework (DCF) which is device independent and accumulates a user’s sensory data from multimodal data sources in real time. DCF curates the context of this accumulated data over the user’s lifelog. DCF provides rule-based anomaly detection over this context-rich lifelog in real time. To provide computation and persistence over the large volume of sensory data, DCF utilizes the distributed and ubiquitous environment of the cloud platform. DCF has been evaluated for its performance, correctness, ability to detect complex anomalies, and management support for a large volume of sensory data.


Expert Systems With Applications | 2016

Improving digital image watermarking by means of optimal channel selection

Thien Huynh-The; Oresti Banos; Sungyoung Lee; Yong-Ik Yoon; Thuong Le-Tien

Novel digital image watermarking method using a wavelet-based quantization approach.Optimal color channel selection scheme for the embedding.Otsus classification-based adaptive threshold for the extraction process.Outperformance of imperceptibility and robustness to state-of-the-art techniques. Supporting safe and resilient authentication and integrity of digital images is of critical importance in a time of enormous creation and sharing of these contents. This paper presents an improved digital image watermarking model based on a coefficient quantization technique that intelligently encodes the owners information for each color channel to improve imperceptibility and robustness of the hidden information. Concretely, a novel color channel selection mechanism automatically selects the optimal HL4 and LH4 wavelet coefficient blocks for embedding binary bits by adjusting block differences, calculated between LH and HL coefficients of the host image. The channel selection aims to minimize the visual difference between the original image and the embedded image. On the other hand, the strength of the watermark is controlled by a factor to achieve an acceptable tradeoff between robustness and imperceptibility. The arrangement of the watermark pixels before shuffling and the channel into which each pixel is embedded is ciphered in an associated key. This key is utterly required to recover the original watermark, which is extracted through an adaptive clustering thresholding mechanism based on the Otsus algorithm. Benchmark results prove the model to support imperceptible watermarking as well as high robustness against common attacks in image processing, including geometric, non-geometric transformations, and lossy JPEG compression. The proposed method enhances more than 4źdB in the watermarked image quality and significantly reduces Bit Error Rate in the comparison of state-of-the-art approaches.


international conference on bioinformatics and biomedical engineering | 2015

An innovative platform for person-centric health and wellness support

Oresti Banos; Muhammad Bilal Amin; Wajahat Ali Khan; Muhammad Afzel; Mahmood Ahmad; Maqbool Ali; Taqdir Ali; Rahman Ali; Muhammad Bilal; Manhyung Han; Jamil Hussain; Maqbool Hussain; Shujaat Hussain; Tae Ho Hur; Jae Hun Bang; Thien Huynh-The; Muhammad Idris; Dong Wook Kang; Sang Beom Park; Hameed Siddiqui; Le-Ba Vui; Muhammad Fahim; Asad Masood Khattak; Byeong Ho Kang; Sungyoung Lee

Modern digital technologies are paving the path to a revolutionary new concept of health and wellness care. Nowadays, many new solutions are being released and put at the reach of most consumers for promoting their health and wellness self-management. However, most of these applications are of very limited use, arguable accuracy and scarce interoperability with other similar systems. Accordingly, frameworks that may orchestrate, and intelligently leverage, all the data, information and knowledge generated through these systems are particularly required. This work introduces Mining Minds, an innovative framework that builds on some of the most prominent modern digital technologies, such as Big Data, Cloud Computing, and Internet of Things, to enable the provision of personalized healthcare and wellness support. This paper aims at describing the efficient and rational combination and interoperation of these technologies, as well as their integration with current and future personalized health and wellness services and business.


Sensors | 2016

Human Behavior Analysis by Means of Multimodal Context Mining

Oresti Banos; Claudia Villalonga; Jaehun Bang; Taeho Hur; Donguk Kang; Sangbeom Park; Thien Huynh-The; Vui Le-Ba; Muhammad Bilal Amin; Muhammad Asif Razzaq; Wahajat Ali Khan; Choong Seon Hong; Sungyoung Lee

There is sufficient evidence proving the impact that negative lifestyle choices have on people’s health and wellness. Changing unhealthy behaviours requires raising people’s self-awareness and also providing healthcare experts with a thorough and continuous description of the user’s conduct. Several monitoring techniques have been proposed in the past to track users’ behaviour; however, these approaches are either subjective and prone to misreporting, such as questionnaires, or only focus on a specific component of context, such as activity counters. This work presents an innovative multimodal context mining framework to inspect and infer human behaviour in a more holistic fashion. The proposed approach extends beyond the state-of-the-art, since it not only explores a sole type of context, but also combines diverse levels of context in an integral manner. Namely, low-level contexts, including activities, emotions and locations, are identified from heterogeneous sensory data through machine learning techniques. Low-level contexts are combined using ontological mechanisms to derive a more abstract representation of the user’s context, here referred to as high-level context. An initial implementation of the proposed framework supporting real-time context identification is also presented. The developed system is evaluated for various realistic scenarios making use of a novel multimodal context open dataset and data on-the-go, demonstrating prominent context-aware capabilities at both low and high levels.


Sensors | 2016

Ontology-Based High-Level Context Inference for Human Behavior Identification

Claudia Villalonga; Muhammad Asif Razzaq; Wajahat Ali Khan; Héctor Pomares; Ignacio Rojas; Sungyoung Lee; Oresti Banos

Recent years have witnessed a huge progress in the automatic identification of individual primitives of human behavior, such as activities or locations. However, the complex nature of human behavior demands more abstract contextual information for its analysis. This work presents an ontology-based method that combines low-level primitives of behavior, namely activity, locations and emotions, unprecedented to date, to intelligently derive more meaningful high-level context information. The paper contributes with a new open ontology describing both low-level and high-level context information, as well as their relationships. Furthermore, a framework building on the developed ontology and reasoning models is presented and evaluated. The proposed method proves to be robust while identifying high-level contexts even in the event of erroneously-detected low-level contexts. Despite reasonable inference times being obtained for a relevant set of users and instances, additional work is required to scale to long-term scenarios with a large number of users.


international work-conference on artificial and natural neural networks | 2015

Multiwindow Fusion for Wearable Activity Recognition

Oresti Banos; Juan-Manuel Galvez; Miguel Damas; Alberto Guillén; L.J. Herrera; Héctor Pomares; Ignacio Rojas; Claudia Villalonga; Choong Seon Hong; Sungyoung Lee

The recognition of human activity has been extensively investigated in the last decades. Typically, wearable sensors are used to register body motion signals that are analyzed by following a set of signal processing and machine learning steps to recognize the activity performed by the user. One of the most important steps refers to the signal segmentation, which is mainly performed through windowing approaches. In fact, it has been proved that the choice of window size directly conditions the performance of the recognition system. Thus, instead of limiting to a specific window configuration, this work proposes the use of multiple recognition systems operating on multiple window sizes. The suggested model employs a weighted decision fusion mechanism to fairly leverage the potential yielded by each recognition system based on the target activity set. This novel technique is benchmarked on a well-known activity recognition dataset. The obtained results show a significant improvement in terms of performance with respect to common systems operating on a single window size.


Sensors | 2015

mDurance: A Novel Mobile Health System to Support Trunk Endurance Assessment

Oresti Banos; Jose A. Moral-Munoz; Ignacio Diaz-Reyes; Manuel Arroyo-Morales; Miguel Damas; Enrique Herrera-Viedma; Choong Seon Hong; Sungyong Lee; Héctor Pomares; Ignacio Rojas; Claudia Villalonga

Low back pain is the most prevalent musculoskeletal condition. This disorder constitutes one of the most common causes of disability worldwide, and as a result, it has a severe socioeconomic impact. Endurance tests are normally considered in low back pain rehabilitation practice to assess the muscle status. However, traditional procedures to evaluate these tests suffer from practical limitations, which potentially lead to inaccurate diagnoses. The use of digital technologies is considered here to facilitate the task of the expert and to increase the reliability and interpretability of the endurance tests. This work presents mDurance, a novel mobile health system aimed at supporting specialists in the functional assessment of trunk endurance by using wearable and mobile devices. The system employs a wearable inertial sensor to track the patient trunk posture, while portable electromyography sensors are used to seamlessly measure the electrical activity produced by the trunk muscles. The information registered by the sensors is processed and managed by a mobile application that facilitates the experts normal routine, while reducing the impact of human errors and expediting the analysis of the test results. In order to show the potential of the mDurance system, a case study has been conducted. The results of this study prove the reliability of mDurance and further demonstrate that practitioners are certainly interested in the regular use of a system of this nature.


international conference of the ieee engineering in medicine and biology society | 2015

Mining human behavior for health promotion

Oresti Banos; Jae Hun Bang; Tae Ho Hur; Muhammad Hameed Siddiqi; Huynh-The Thien; Le-Ba Vui; Wajahat Ali Khan; Taqdir Ali; Claudia Villalonga; Sungyoung Lee

The monitoring of human lifestyles has gained much attention in the recent years. This work presents a novel approach to combine multiple context-awareness technologies for the automatic analysis of peoples conduct in a comprehensive and holistic manner. Activity recognition, emotion recognition, location detection, and social analysis techniques are integrated with ontological mechanisms as part of a framework to identify human behavior. Key architectural components, methods and evidences are described in this paper to illustrate the interest of the proposed approach.

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