汕头大学学报(自然科学版)
汕頭大學學報(自然科學版)
산두대학학보(자연과학판)
JOURNAL OF SHANTOU UNIVERSITY (NATURAL SCIENCE EDITION)
2013年
2期
55-64
,共10页
人脸识别%SIFT 算子%相似度函数%Adaboost
人臉識彆%SIFT 算子%相似度函數%Adaboost
인검식별%SIFT 산자%상사도함수%Adaboost
face recognition%SIFT descriptor%similarity function%Adaboost
针对光照、表情、噪声等因素容易造成误识别的问题,提出一种改进的 SIFT 特征人脸识别方法.对每个训练图像,先提取得到 SIFT 特征向量集合,利用每个 SIFT 特征向量,并选择阈值构造一个弱分类器.利用一种基于 Adaboost 的算法从每个训练图像的弱分类器集合中选出一部分,确定其对应的阈值和权重,然后构造出该训练图像的相似度函数.根据相似度函数可计算出目标图像与每个训练图像的相似度,从而求出目标图像与每个类的训练图像的平均相似度,则目标图像属于平均相似度最高的类.实验表明在 ORL 人脸数据库上则可达到98%识别率,优于现有的方法.
針對光照、錶情、譟聲等因素容易造成誤識彆的問題,提齣一種改進的 SIFT 特徵人臉識彆方法.對每箇訓練圖像,先提取得到 SIFT 特徵嚮量集閤,利用每箇 SIFT 特徵嚮量,併選擇閾值構造一箇弱分類器.利用一種基于 Adaboost 的算法從每箇訓練圖像的弱分類器集閤中選齣一部分,確定其對應的閾值和權重,然後構造齣該訓練圖像的相似度函數.根據相似度函數可計算齣目標圖像與每箇訓練圖像的相似度,從而求齣目標圖像與每箇類的訓練圖像的平均相似度,則目標圖像屬于平均相似度最高的類.實驗錶明在 ORL 人臉數據庫上則可達到98%識彆率,優于現有的方法.
침대광조、표정、조성등인소용역조성오식별적문제,제출일충개진적 SIFT 특정인검식별방법.대매개훈련도상,선제취득도 SIFT 특정향량집합,이용매개 SIFT 특정향량,병선택역치구조일개약분류기.이용일충기우 Adaboost 적산법종매개훈련도상적약분류기집합중선출일부분,학정기대응적역치화권중,연후구조출해훈련도상적상사도함수.근거상사도함수가계산출목표도상여매개훈련도상적상사도,종이구출목표도상여매개류적훈련도상적평균상사도,칙목표도상속우평균상사도최고적류.실험표명재 ORL 인검수거고상칙가체도98%식별솔,우우현유적방법.
@@@@By aiming at the problem of misrecognition caused by factors such as light, expression and noise, an improved method based on SIFT feature for face recognition is proposed. First of all,a set of SIFT feature vectors are extracted from every training image. A weak classifier can be constructed with a SIFT feature vector and a threshold. For every training image,some weak classifiers are selected with thresholds and weights by an algorithm based on Adaboost. A similarity function for training images is established. Similarity between object image and training images can be calculated by similarity functions. The average similarity between object image and each class is gained. Finally,an object image is classified to the class with the maximum average similarity. It’s verified that this method is able to increase the recognition rate to 96.82% on AR face database and to 98% on ORL face database, which is better than other existing methods.