people


Principal Investigator


Dr. Reza Ebrahimpour

Reza Ebrahimpour is an Associate Professor at the Department of Computer Engineering, Shahid Rajaee Teacher Training University, Tehran, Iran. He is also a Scientific committee of School of Cognitive Sciences(SCS), Institute for Research in Fundamental Sciences(IPM), Tehran, Iran. He obtained Ph.D. degree in the field of Computational Neuroscience from the SCS, IPM, Tehran, Iran in July 2007. Dr. Ebrahimpour is the author or co-author of more than 100 international journal and conference publications in his research areas, which include Computational and Cognitive Neuroscience, Human and Machine Vision, Biological Object Recognition, Brain Machine Interface, Neural Computation.

Telephone:
(+۹۸-۲۱)۲۲۲۹۴۰۳۵

E-mail: ebrahimpour@ipm.ir

Homepage: IPM, SRU

(Curriculum Vitae)


Researchers


hamid karimi

Hamid Karimi

PhD Student

Invariant Object Recognition, Attention

hkarimi@ipm.ir

Karim Rajaei

Karim Rajaei

PhD Student

Face/Object Recognition

rajaei.k@ipm.ir

Sajjad Zabbah

Sajjad Zabbah

PhD Student

Decision Making, Object Recognition

s.zabbah@ipm.ir

mhkarimi

Mohammad Hossein Karimi

PhD Student

mhkarimi@rocketmail.com

Mehrdad Akhavan Behbahany

Mehrdad Akhavan Behbahany

MD and PhD student of cognitive neuroscience

Temporal dynamics of visual processing

Akhavan_m@iricss.org

Farzmahdi

Amirhossein Farzmahdi

MSc

Face/Object Recognition

a.farzmahdi@aut.ac.ir

Farzaneh Olianezhad

Farzaneh Olianezhad

MSc

Decision Making

f.olianezhad@srttu.edu

Maryam TohidiMoghaddam

Maryam TohidiMoghaddam

MSc

Decision Making, Bottom-up Attention

M.tohidi@srttu.edu

Fariba Abbasi

Fariba Abbasi

MSc

Figure-Ground Segregation

f.abbasi@srttu.edu

Davoud Nouri

Davoud Nouri

MSc Student

Spiking Neural Networks

d.nouri@mail.sbu.ac.ir

MM

Masoumeh Mahallati

PhD Student

Bottom-up and Top-down Attention

m.mahallati@ipm.ir

mohammad

Mohammad Shams-Ahmar

MSc

Overt Attention

m.shamsahmar@ipm.ir


Alumni


seyed kalighrazavi

Seyed-Mahdi Khaligh Razavi

Postdoctoral Associate, Computer Science & Artificial Intelligence Laboratory, MIT

skhaligh@mit.edu

Masoud Ghodrati

Masoud Ghodrati

Monash University

masoud.ghodrati@monash.edu

Amin Mirzaei

Amin Mirzaei

University of Freiburg

amin.mirzaei@blbt.uni-freiburg.de

I am text block. Click edit button to change this text. Lorem ipsum dolor sit amet, consectetur adipiscing elit. Ut elit tellus, luctus nec ullamcorper mattis, pulvinar dapibus leo.

Research

 Object/Face recognition:

We are investigating underlying mechanisms of face/object processing in the primate visual systems. We have been exploring about how the visual system recognizes different objects and trying to present a new model which is more consistent with the function of the visual system in face/object recognition. In order to achieve this goal, we are going to answer these questions: What are the cortical mechanisms underlying the different stages of the hierarchies in the visual system? What are the differences between cortical mechanisms of face and objects processing? How can visual system learn invariant representations of faces and objects? What are the temporal aspects of face processing? We are utilizing numerous methods such as computational modeling, Electroencephalography (EEG) recording, and visual psychophysics to discover the answers of these questions.

 

Decision making:

How we make decisions? This is our main question in this area of research. Decision making is an integrative process that results in the commitment to a categorical proposition. Determining an action based on evidences, brain should collect information from sources in different modalities. While Prior knowledge, costs and benefits of the responses get involved in the process, it should be finished in a proper time. Our research focuses on two approaches: first we probe for different aspects of decision making process with analyzing behavioral responses in psychophysics experiments. Using data from brain activities ( EEG, fMRI and cell recording), we investigate characteristics of decision process in the context of neural activities. Computational models help us to propose neural mechanism of the process. Validity of the models depends on their ability to respond for different characteristics of decision making process.

 

Attention:

One of significant mechanisms by the use of which our cognitive abilities are improved is attention. Top down visual attention is observed to affect neuronal response at different areas of visual cortex. This effect is seen to modulate the spike rate of neurons as well as their gamma-band LFP power, local gamma-band coherence, low frequency synchrony, correlated noise at low frequencies, receptive field and Fano factor. These modulations are detectable when recording from neurons under different experimental conditions, i.e. overt and covert attention tasks. Using data analysis, computational and statistical methods, we try to decode neural recordings to come up with underlying models and strategies involved when attention is employed in cognitive tasks. This will, in turn, pave the way for understanding other neural mechanisms involved in cognition. One of the running projects in our lab is focused on the effects of attention in improved cognition.

I am text block. Click edit button to change this text. Lorem ipsum dolor sit amet, consectetur adipiscing elit. Ut elit tellus, luctus nec ullamcorper mattis, pulvinar dapibus leo.

Selected Publications

۲۰۱۴

۲۰۱۳

۲۰۱۲

I am text block. Click edit button to change this text. Lorem ipsum dolor sit amet, consectetur adipiscing elit. Ut elit tellus, luctus nec ullamcorper mattis, pulvinar dapibus leo.

Collaborators

Current and former collaborators

Seyed-Mahdi Khaligh-Razavi

Postdoctoral Associate, Computer Science & Artificial Intelligence Laboratory, MIT, USA

Behrad Noudoost

Department of Cell Biology and Neuroscience, Montana State University, USA

Mohammad R.N. Avanaki

Department of Biomedical Engineering and School of Medicine, Wayne state university, USA

I am text block. Click edit button to change this text. Lorem ipsum dolor sit amet, consectetur adipiscing elit. Ut elit tellus, luctus nec ullamcorper mattis, pulvinar dapibus leo.