A Gray Gradient Based Fast Training Algorithm for Face Detection

Weimin Chen, Wei Wang, Dongxia Xu
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Abstract

This paper describes a fast and simple training method for face detection based on block gradient of the gray level. The gradient orientation is one of the most essential features to describe the image structure. In this paper, the detector is trained just by the positive samples from which the feature values accumulated are regarded as the values' weight to detect. The training set is of 50 faces simples. Each image is divided into three resolutions of 4×4, 8×8 and 16×16 to train the detector for different scales. While the detected value in low resolution is higher than the likelihood threshold, high resolution detector is used for a further detecting. Although the training framework is very simple, the correct detection rate is 91%.
基于灰度梯度的人脸检测快速训练算法
本文提出了一种基于灰度分块梯度的快速简便的人脸检测训练方法。梯度方向是描述图像结构最基本的特征之一。在本文中,检测器仅通过将特征值积累的正样本作为检测值的权重来训练检测器。训练集有50张简单的脸。每张图像被分为4×4、8×8和16×16三种分辨率,以训练不同尺度的检测器。当低分辨率检测值高于似然阈值时,使用高分辨率检测器进行进一步检测。虽然训练框架很简单,但正确检出率高达91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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