kernel canonical correlation analysis
基本解釋
- [計(jì)算機(jī)科學(xué)技術(shù)]核典型相關(guān)分析
英漢例句
- Kernel Canonical Correlation Analysis(KCCA) is a recently addressed supervised machine learning methods, which is a powerful approach of extracting nonlinear features.
針對(duì)該問(wèn)題,采用核典型相關(guān)分析方法進(jìn)行原始特征的二次提取,得到簡(jiǎn)約而重要的二次特征。 - By introducing the kernel trick to the canonical correlation analysis(CCA), a feature fusion method based on kernel CCA(KCCA) is established and is then used to capture the associated feat.
該方法首先采集側(cè)面視角人臉圖像,然后將核方法引入到典型相關(guān)分析(CCA)中,提出基于核CCA的特征融合方法,并應(yīng)用其提取人耳人臉的關(guān)聯(lián)特征進(jìn)行個(gè)體的分類識(shí)別。
雙語(yǔ)例句
專業(yè)釋義
- 核典型相關(guān)分析