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Transparent Peer Review By Scholar9

Face Recognition : Diversified

Abstract

This paper presents a novel lightweight hybrid architecture for face recognition, combining the strengths of MobileNet and attention mechanisms to enhance performance under challenging conditions such as facial occlusions (e.g., masks), varied illumination, and diverse expressions. The proposed model is evaluated against popular baseline models, including MobileNetV2, EfficientNetB2, and VGG16, on the Yale Face Dataset and a Simulated Masked Yale Dataset. On the Yale Dataset, the hybrid model achieved superior results with an accuracy of 93.78%, precision of 94.45%, recall of 93.33%, and F1-score of 93.89%, outperforming the baseline models in all key metrics. Additionally, when tested on the Simulated Masked Yale Dataset, the hybrid model exhibited increased resilience to occlusion with an accuracy of 63.45% and F1-score of 64.22%, significantly surpassing the other architectures.

Abhijeet Bajaj Reviewer

badge Review Request Accepted

Abhijeet Bajaj Reviewer

15 Oct 2024 03:30 PM

badge Not Approved

Relevance and Originality

Methodology

Validity & Reliability

Clarity and Structure

Results and Analysis

Relevance and Originality

The research article presents a timely and relevant topic in the realm of face recognition technology, particularly given the increasing prevalence of facial occlusions, such as masks, in real-world applications. The novelty of the proposed lightweight hybrid architecture, which combines MobileNet with attention mechanisms, addresses specific challenges in the field and showcases potential for enhancing performance. This originality is a significant contribution, particularly as it highlights an innovative approach to improving accuracy and resilience in face recognition systems under challenging conditions. However, elaborating on how this architecture differs from existing solutions would further clarify its unique contributions.


Methodology

The methodology utilized in this research article is well-defined, involving a clear comparison between the proposed hybrid model and established baseline models like MobileNetV2, EfficientNetB2, and VGG16. The choice of datasets, including the Yale Face Dataset and a Simulated Masked Yale Dataset, is appropriate for assessing the model's performance under varied conditions. However, the article could benefit from a more detailed explanation of the training process, including hyperparameters and data augmentation techniques used. Providing this information would enhance the transparency and replicability of the research, which is essential for validating the proposed model's effectiveness.


Validity & Reliability

The validity of the results presented in the research article is strong, as evidenced by the comprehensive evaluation of the hybrid model against multiple baseline architectures. The reported metrics—accuracy, precision, recall, and F1-score—demonstrate the model's performance convincingly, particularly on the Yale Dataset, where it achieved superior results. Nevertheless, to further establish reliability, the article should address potential limitations of the study, such as overfitting or the generalizability of the results to other datasets or real-world scenarios. Including discussions on potential biases in the dataset or the impact of varying training conditions would provide a more robust framework for assessing the findings.


Clarity and Structure

The clarity and structure of the research article are generally effective, with a logical progression that guides readers through the problem statement, methodology, results, and discussions. Key findings are clearly articulated, making the article accessible to both technical and non-technical audiences. However, certain sections, particularly those detailing the model architecture and evaluation metrics, could benefit from more concise explanations and visual aids, such as diagrams or charts, to enhance understanding. Improving these areas would help streamline the presentation and facilitate reader engagement.


Result Analysis

The result analysis in the research article effectively highlights the strengths of the proposed hybrid model, particularly in its ability to handle facial occlusions and varied conditions. The performance metrics provided—such as the impressive accuracy of 93.78% on the Yale Dataset—demonstrate the model's effectiveness compared to baseline architectures. However, the analysis could be strengthened by providing more in-depth discussions on the implications of these results, particularly concerning real-world applications and potential improvements. Additionally, a comparative analysis of the models' performances in different environmental conditions would enrich the understanding of the model's resilience and utility in practical scenarios.

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IJ Publication Publisher

ok sir

Publisher

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IJ Publication

Reviewer

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Abhijeet Bajaj

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Paper Category

Computer Engineering

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Journal Name

JETIR - Journal of Emerging Technologies and Innovative Research

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p-ISSN

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e-ISSN

2349-5162

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