Revisiting face detection: Supercharging Viola-Jones with particle swarm optimization for enhanced performance

M. Mohana, P. Subashini, Diksha Shukla
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Abstract

In recent years, face detection has emerged as a prominent research field within Computer Vision (CV) and Deep Learning. Detecting faces in images and video sequences remains a challenging task due to various factors such as pose variation, varying illumination, occlusion, and scale differences. Despite the development of numerous face detection algorithms in deep learning, the Viola-Jones algorithm, with its simple yet effective approach, continues to be widely used in real-time camera applications. The conventional Viola-Jones algorithm employs AdaBoost for classifying faces in images and videos. The challenge lies in working with cluttered real-time facial images. AdaBoost needs to search through all possible thresholds for all samples to find the minimum training error when receiving features from Haar-like detectors. Therefore, this exhaustive search consumes significant time to discover the best threshold values and optimize feature selection to build an efficient classifier for face detection. In this paper, we propose enhancing the conventional Viola-Jones algorithm by incorporating Particle Swarm Optimization (PSO) to improve its predictive accuracy, particularly in complex face images. We leverage PSO in two key areas within the Viola-Jones framework. Firstly, PSO is employed to dynamically select optimal threshold values for feature selection, thereby improving computational efficiency. Secondly, we adapt the feature selection process using AdaBoost within the Viola-Jones algorithm, integrating PSO to identify the most discriminative features for constructing a robust classifier. Our approach significantly reduces the feature selection process time and search complexity compared to the traditional algorithm, particularly in challenging environments. We evaluated our proposed method on a comprehensive face detection benchmark dataset, achieving impressive results, including an average true positive rate of 98.73% and a 2.1% higher average prediction accuracy when compared against both the conventional Viola-Jones approach and contemporary state-of-the-art methods.
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重新审视人脸检测:用粒子群优化技术提升 Viola-Jones 性能
近年来,人脸检测已成为计算机视觉(CV)和深度学习的一个重要研究领域。由于姿势变化、光照变化、遮挡和尺度差异等各种因素,在图像和视频序列中检测人脸仍然是一项具有挑战性的任务。尽管深度学习领域开发出了许多人脸检测算法,但 Viola-Jones 算法凭借其简单而有效的方法,仍然在实时相机应用中得到广泛应用。传统的 Viola-Jones 算法采用 AdaBoost 对图像和视频中的人脸进行分类。挑战在于如何处理杂乱的实时人脸图像。AdaBoost 需要搜索所有样本的所有可能阈值,以便在接收来自类 Haar 检测器的特征时找到最小的训练误差。因此,这种穷举式搜索会耗费大量时间来发现最佳阈值并优化特征选择,从而建立高效的人脸检测分类器。在本文中,我们建议通过结合粒子群优化(PSO)来增强传统的 Viola-Jones 算法,以提高其预测准确性,尤其是在复杂的人脸图像中。我们在 Viola-Jones 框架的两个关键领域利用了 PSO。首先,利用 PSO 动态选择最佳阈值进行特征选择,从而提高计算效率。其次,我们在 Viola-Jones 算法中使用 AdaBoost 对特征选择过程进行调整,整合 PSO 来识别最具区分度的特征,从而构建一个稳健的分类器。与传统算法相比,我们的方法大大减少了特征选择过程的时间和搜索复杂度,尤其是在具有挑战性的环境中。我们在一个全面的人脸检测基准数据集上评估了我们提出的方法,结果令人印象深刻,包括与传统的 Viola-Jones 方法和当代最先进的方法相比,平均真阳性率达到 98.73%,平均预测准确率提高了 2.1%。
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