自动化学报
自動化學報
자동화학보
ACTA AUTOMATICA SINICA
2015年
4期
772-784
,共13页
李文平%杨静%印桂生%张健沛
李文平%楊靜%印桂生%張健沛
리문평%양정%인계생%장건패
典型相关分析%数据场%特征提取%图像分割
典型相關分析%數據場%特徵提取%圖像分割
전형상관분석%수거장%특정제취%도상분할
Canonical correlation analysis (CCA)%data field%feature extraction%image segmentation
针对数据场环境下多维数据的低维特征提取问题,本文将数据之间的相互作用纳入其相关性求解中,提出一种基于数据场的典型相关分析(Data field based canonical correlation analysis, DFCCA)方法。 DFCCA提取的特征具有良好的分布特性,原空间上相隔较远的数据点对的特征聚集在一个较小区域内,而相邻数据点对的特征却有规律地分布在其他点所聚集区域的周围。此特性使得DFCCA具有较好的边界辨识能力,将其应用于图像分割的实验结果表明, DFCCA提取的复杂图像边界具有较好的保真度。
針對數據場環境下多維數據的低維特徵提取問題,本文將數據之間的相互作用納入其相關性求解中,提齣一種基于數據場的典型相關分析(Data field based canonical correlation analysis, DFCCA)方法。 DFCCA提取的特徵具有良好的分佈特性,原空間上相隔較遠的數據點對的特徵聚集在一箇較小區域內,而相鄰數據點對的特徵卻有規律地分佈在其他點所聚集區域的週圍。此特性使得DFCCA具有較好的邊界辨識能力,將其應用于圖像分割的實驗結果錶明, DFCCA提取的複雜圖像邊界具有較好的保真度。
침대수거장배경하다유수거적저유특정제취문제,본문장수거지간적상호작용납입기상관성구해중,제출일충기우수거장적전형상관분석(Data field based canonical correlation analysis, DFCCA)방법。 DFCCA제취적특정구유량호적분포특성,원공간상상격교원적수거점대적특정취집재일개교소구역내,이상린수거점대적특정각유규률지분포재기타점소취집구역적주위。차특성사득DFCCA구유교호적변계변식능력,장기응용우도상분할적실험결과표명, DFCCA제취적복잡도상변계구유교호적보진도。
In this paper, for extracting low-dimensional features from multi-dimensional data in data field environment, we propose a novel method of canonical correlation analysis (CCA) called DFCCA (data field based CCA) by introducing interactions among data into data correlation solving. The features extracted by DFCCA have better distribution prop-erties, that is the features corresponding to a data point pair that are far apart from each other gather together in a small region, but other features corresponding to the pair of data points that are neighboring each other will scatter regularly around the region. Thanks to these properties, DFCCA has a good capability of frontier identification. Experimental results on image segmentation demonstrate that the frontiers extracted from complex images by DFCCA hold better fidelity.