Abstract
Action on any objects provides perceptual information about the environment. There is substantial evidence that human visual system responds to action possibilities in an image as perceiving any one’s action stimulates human motor system. However very limited studies have been done to analyze the effect of object affordance during action perception and execution. To study the effect of object affordance on human perception, in this paper we have analyzed the human brain signals using EEG based oscillatory activity of brain. EEG responses corresponding to images of objects shown with correct, incorrect and without grips are examined. Exploration of different gripping effects has been done by extracting Alpha and Beta frequency bands using Discrete Wavelet Transform based band extraction method, then baseline normalized power of Alpha and Beta frequency bands at 24 positions of motor area of left and right side of brain are examined. The result shows that twelve pooled electrodes at central and central parietal region provides a clear discrimination among the three gripping cases in terms of calculated power. The presented research explores new applicabilities of object affordance to develop a variety of Brain Computer Interface (BCI) based devices and to improve motor imagery ability among motor disorder related patients.
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05 January 2019
The original version of the chapter “Analysis of Action Oriented Effects on Perceptual Process of Object Recognition Using Physiological Responses”, starting on p. 46 has been revised. The affiliations were mismatched to the author names in the XML version. The original article was corrected.
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Sharma, S., Mishra, A., Kumar, S., Ranjan, P., Ujlayan, A. (2018). Analysis of Action Oriented Effects on Perceptual Process of Object Recognition Using Physiological Responses. In: Tiwary, U. (eds) Intelligent Human Computer Interaction. IHCI 2018. Lecture Notes in Computer Science(), vol 11278. Springer, Cham. https://doi.org/10.1007/978-3-030-04021-5_5
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