Andrei Cosmin JITARU

About Andrei Cosmin JITARU

Andrei Cosmin JITARU, With an exceptional h-index of 2 and a recent h-index of 2 (since 2020), a distinguished researcher at Universitatea Politehnica din Bucuresti, specializes in the field of computer vision, speech recognition, object classification.

His recent articles reflect a diverse array of research interests and contributions to the field:

Deepfake Sentry: Harnessing Ensemble Intelligence for Resilient Detection and Generalisation

Assessing the difficulty of predicting media memorability

High Density Crowd Scene Detection in Untrimmed Streaming Videos for Surveillance Purpose

Deep Learning-based Object Searching and Reporting for Aerial Surveillance Systems

Toward language-independent lip reading: A transfer learning approach

Lrro: a lip reading data set for the under-resourced romanian language

Andrei Cosmin JITARU Information

University

Position

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Citations(all)

11

Citations(since 2020)

11

Cited By

0

hIndex(all)

2

hIndex(since 2020)

2

i10Index(all)

0

i10Index(since 2020)

0

Email

University Profile Page

Google Scholar

Andrei Cosmin JITARU Skills & Research Interests

computer vision

speech recognition

object classification

Top articles of Andrei Cosmin JITARU

Deepfake Sentry: Harnessing Ensemble Intelligence for Resilient Detection and Generalisation

arXiv preprint arXiv:2404.00114

2024/3/29

Assessing the difficulty of predicting media memorability

2023/9/20

High Density Crowd Scene Detection in Untrimmed Streaming Videos for Surveillance Purpose

2023/6/29

Deep Learning-based Object Searching and Reporting for Aerial Surveillance Systems

2022/6/16

Toward language-independent lip reading: A transfer learning approach

2021/7/15

Lrro: a lip reading data set for the under-resourced romanian language

2020/5/27

Andrei Cosmin Jitaru
Andrei Cosmin Jitaru

H-Index: 0

Bogdan Ionescu
Bogdan Ionescu

H-Index: 23

See List of Professors in Andrei Cosmin JITARU University(Universitatea Politehnica din Bucuresti)

Co-Authors

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