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Galib Muhammad Shahriar  Himel
Galib Muhammad Shahriar Himel

Public Documents 2
A State-of-the-Art Review of One-Pixel Attack in Computer Vision
Mirza Niaz Morshed
Md. Masudul Islam

Mirza Niaz Morshed

and 3 more

July 08, 2025
One-pixel attacks reveal critical vulnerabilities in deep neural networks, where minimal, imperceptible pixel modifications can lead to misclassifications causing significant harm depending on the field. While existing research primarily addresses the technical aspects, attack models, and defense strategies, a comprehensive review synthesizing the advantages, limitations, and evolving solutions of OPAs has been lacking. Adhering to the PRISMA framework, this study bridges that gap by critically reviewing 30 high-impact studies from 2017 to 2025, offering an in-depth analysis of OPA mechanisms, applications, and countermeasures. The review emphasizes the growing sophistication of black-box evolutionary algorithms in crafting highly effective, stealthy attacks often targeting high-saliency regions across benchmark datasets. Particular attention is given to domain-specific applications, such as medical imaging where attacks can manipulate cancer diagnoses and quantum communication, highlighting the broader implications for critical systems. Current defense strategies are predominantly reactive and face challenges in generalizability, often compromising accuracy on benchmark data. This review identifies key research gaps and proposes various future recommendations. By offering a structured and organized taxonomy, this review aims to guide researchers and practitioners in advancing secure, interpretable, and robust AI systems in the face of adversarial threats.
Stacked Deep Learning Ensembles for Binary Image Classification: Benchmarking with th...
Galib Muhammad Shahriar  Himel
Md. Masudul Islam

Galib Muhammad Shahriar Himel

and 1 more

October 11, 2025
This study introduces a rigorous stacked ensemble framework for binary image classification, specifically targeting the Cats vs. Dogs dataset. The proposed method integrates eight transfer-learning convolutional neural networks (CNNs): Xception, VGG16, VGG19, InceptionV3, InceptionResNetV2, MobileNet, MobileNetV2, and DenseNet121 as base learners, combined via eight different meta-learners. Through extensive experimentation that included hyperparameter optimization, ablation studies, and robustness assessments (under Gaussian noise and image blur), the ensemble demonstrated superior accuracy and reliability. The optimal configuration, which utilized a Support Vector Machine (SVM) meta-learner, achieved an accuracy of 99.28%, surpassing prior benchmarks. Statistical analysis confirmed the significance of this improvement (paired t-test: t = 29.94, p < 0.0001). InceptionResNetV2 and Xception made the largest contributions to ensemble performance, as revealed by ablation studies. The model also maintained robust performance under noise (97.91% accuracy) and blur (98.43% accuracy), attesting to its suitability for practical applications such as veterinary diagnostics and pet identification. This work highlights the effectiveness of deep learning ensembles in binary image classification tasks and suggests future directions in adaptive ensemble weighting and cross-dataset validation.

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