رزومه


EN
حسن فرسی

حسن فرسی

استاد

دانشکده: مهندسی برق و کامپیوتر

گروه: مخابرات

مقطع تحصیلی: دکترای تخصصی

رزومه
EN
حسن فرسی

استاد حسن فرسی

دانشکده: مهندسی برق و کامپیوتر - گروه: مخابرات مقطع تحصیلی: دکترای تخصصی |

Advanced Multi-Task Learning with Lightweight Networks and Multi-Head Attention for Efficient Facial Attribute Estimation

نویسندگانHassan Farsi, ,Sajad Mohamadzadeh
نشریهInternational Journal of Engineering
شماره صفحات2259-2272
شماره سریال38
شماره مجلد10
نوع مقالهFull Paper
تاریخ انتشار2025
رتبه نشریهعلمی - پژوهشی
نوع نشریهچاپی
کشور محل چاپایران
نمایه نشریهJCR،isc،Scopus
کلید واژه هاFacial Attribute Estimation Convolutional Neural Network Multi, Task Learning Preprocessing Multi, Head Attention

چکیده مقاله

The rapid advancement of computer vision algorithms demands efficient computational resource utilization for practical applications. This study proposes a novel framework that integrates multi-task learning (MTL) with MobileNetV3-Large networks and multi-head attention (MHA) mechanisms to simultaneously estimate facial attributes, including age, gender, race, and emotions. By employing MHA, the model enhances feature extraction and representation by focusing on multiple regions of the input image, thereby reducing computational complexity while significantly improving accuracy. The Receptive Field Enhanced Multi-Task Cascaded (RFEMTC) technique is utilized for effective preprocessing of the input data. Our methodology is rigorously evaluated on the UTKFace, FairFace, and RAF-DB datasets. We introduce a weighted loss function to balance task contributions, enhancing overall performance. Through refinement of the network architecture by analyzing branching points and optimizing the balance between shared and task-specific layers, our experimental results demonstrate significant improvements: a 7% reduction in parameters, a 3% increase in gender detection accuracy, a 5% improvement in race detection accuracy, and a 6% enhancement in emotion detection accuracy compared to single-task methods. Additionally, our proposed architecture reduces age estimation error by approximately one year on the UTKFace dataset and improves age estimation accuracy on the FairFace dataset by 5% compared to state-of-the-art approaches.

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