Abstract

In recent years, face detection has achieved considerable attention in the field of computer vision using traditional machine learning techniques and deep learning techniques. Deep learning is used to build the most recent and powerful face detection algorithms. However, partial face detection still remains to achieve remarkable performance. Partial faces are occluded due to hair, hat, glasses, hands, mobile phones, and side-angle-captured images. Fewer facial features can be identified from such images. In this paper, we present a deep convolutional neural network face detection method using the anchor boxes section strategy. We limited the number of anchor boxes and scales and chose only relevant to the face shape. The proposed model was trained and tested on a popular and challenging face detection benchmark dataset, i.e., Face Detection Dataset and Benchmark (FDDB), and can also detect partially covered faces with better accuracy and precision. Extensive experiments were performed, with evaluation metrics including accuracy, precision, recall, F1 score, inference time, and FPS. The results show that the proposed model is able to detect the face in the image, including occluded features, more precisely than other state-of-the-art approaches, achieving 94.8% accuracy and 98.7% precision on the FDDB dataset at 21 frames per second (FPS).

Highlights

  • In computer vision, face detection has been a major focus for many years

  • We proposed a deep convolutional neural network for partial face detection using the anchor box selection strategy on the Face Detection Dataset and Benchmark (FDDB) dataset; We utilized the class existence probability of anchor proposals to classify the partial features of faces; Big Data Cogn

  • false negatives (FNs) represent incorrect face detection, such as misidentifying a background as the face, whereas false positives (FPs) show that incorrect face detection is the background of the face

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Summary

Introduction

Face detection has been a major focus for many years. The main aim of face detection systems is to locate the face in the image, with its bounding box.Face detection has been included in the prior work of some important applications such as face recognition, face analysis, face mask detection, face tracking, and face alignment.Viola-Jones performed the pioneering face detection work by proposing the haar-cascading, feature extraction method [1]. Face detection has been a major focus for many years. The main aim of face detection systems is to locate the face in the image, with its bounding box. Face detection has been included in the prior work of some important applications such as face recognition, face analysis, face mask detection, face tracking, and face alignment. Viola-Jones performed the pioneering face detection work by proposing the haar-cascading, feature extraction method [1]. Big data and high-performance computing systems have helped deep learning to achieve remarkable results in many applications, including natural language processing, manufacturing, computer vision, healthcare, and speech recognition. Deep convolutional neural network (DCNN)-based methods have proven to be more effective than conventional methods for object detection. Researchers have started applying DCNN methods for face detection

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