The Role of Feature Selection with Applications to Eye Movements using Electrooculography
نویسندگان
چکیده
Eyes are the windows to the brain and the eye movements are a rich source of information in information processing. The aim of this paper is to select the features with CBFS Feature selection algorithm using eye movements by ElectroOculoGraph (EOG) signals during reading and writing task. The objective is to impart the fundamental functionality to get an extensive understanding of how EOG signals can be applied in human computer interaction (HCI) and what can be inferred from those signals using feature selection and data mining classification techniques. This paper first identifies the importance of eye movements and EOG signals then analyze EOG signals by CBFS (clearness based feature selection), mRMR (minimum redundancy maximum relevance) feature Selection methods and the third section analyzes the time complexity of CBFS method & describes the performance of data mining classification in EOG signals.
منابع مشابه
Feature Selection in Classification of Eye Movements Using Electrooculography for Activity Recognition
Activity recognition is needed in different requisition, for example, reconnaissance system, patient monitoring, and human-computer interfaces. Feature selection plays an important role in activity recognition, data mining, and machine learning. In selecting subset of features, an efficient evolutionary algorithm Differential Evolution (DE), a very efficient optimizer, is used for finding infor...
متن کاملEfficient Classification of EOG using CBFS Feature Selection Algorithm
This work select the features in high dimensional data using eye movements of reading and writing by ElectroOculoGraph (EOG) signals. EOG measures the changes in the electric potential field caused by eye movements. This work has three phases; the first phase identifies and removes noise from the signal. The second phase involves analysis of EOG signals by CBFS Feature Selection method and the ...
متن کاملApplying Feature-Selection Algorithm to Predict Landslide in the Southwest of Iran
Extended abstract 1- INTRODUCTION Nowadays people have an increased sensitivity towards landslides especially in mountainous areas using change in the land use and the expansion of communication networks (Gvrsysky et al., 2006). In the twentieth century, Asia has allocated the highest incident of landslides (220 landslides). Latin America has had the highest number of casualties (more than 2,...
متن کاملDevelopment strategy of eye movement controlled rehabilitation aid using Electro-oculogram
This paper proposes a strategy to develop an eye movement controlled rehabilitation aid using Electro-oculogram (EOG) to help severely paralyzed persons. Here, acquisition of EOG is done with a designed circuit. From EOG, eye movements in left and right directions are classified using radial basis function (RBF) artificial neural network (ANN). For classification wavelet coefficients are used a...
متن کاملDevelopment of robust electrooculography (EOG)- based human-computer interface controlled by eight- directional eye movements
Electrooculography (EOG) signal is one of the useful electro-physiological signals. The EOG signals provide information about eye movements that can be used as a control signal in human-computer interface (HCI). Usually, eight-directional movements, including up, down, right, left, up-right, up-left, down-right and down-left, are proposed. Development of the EOG signal classification has been s...
متن کامل