Feature-based classification of optical water types in the Northwest Atlantic based on satellite ocean color data

被引:29
|
作者
Traykovski, LVM [1 ]
Sosik, HM [1 ]
机构
[1] Woods Hole Oceanog Inst, Dept Biol, Woods Hole, MA 02543 USA
关键词
classification; ocean color; optical water type; SeaWiFS; Northwest Atlantic;
D O I
10.1029/2001JC001172
中图分类号
P7 [海洋学];
学科分类号
0707 ;
摘要
[1] We have developed an optical water type classification approach based on remotely sensed water leaving radiance, for application to the study of spatial and temporal dynamics of ecologically and biogeochemically important properties of the upper ocean. For CZCS and SeaWiFS imagery of the Northwest Atlantic region, pixels from several different locations projected into distinct clusters in water-leaving radiance feature space, suggesting that these waters can be distinguished using a few spectral bands of ocean color data. Based on these clusters, we constructed a Northwest Atlantic Training Set and developed two different classification techniques. The Euclidean Distance Classifier minimizes the raw distance between each pixel and the centroid of the class to which it is assigned, whereas the Eigenvector Classifier is based on scaling the raw distances by the variance of each class, thereby accounting for the shape of each class in feature space. We conducted an initial evaluation of these two classification techniques by constructing water type classes based on only half of the pixels of each water type (randomly selected) in the Northwest Atlantic Training Set; classification was then carried out on the remaining half of the training set data. Applying the Euclidean Distance Classifier resulted in an average of 97.4% correctly classified pixels over 20 trials; even higher success rates were achieved with the Eigenvector Classifier, which gave an average of 99.1% correctly classified pixels. The Euclidean Distance Classifier performed well with spherical classes, but with more ellipsoidal classes, classification success improved considerably using the Eigenvector Classifier. We then applied these classifiers to ocean color images of the Northwest Atlantic to elucidate the geographical location and extent of each water type. We interpreted classifier results based on our Classification Goodness of Fit measure, which indicates how closely a given pixel is associated with its assigned class. This revealed that sharp boundaries exist between water masses of different optical types, with pixels on either side of the boundaries being strongly associated with their water type class. We anticipate that our classification techniques will facilitate long-term time series studies by tracking optical water types through seasonal and interannual changes.
引用
收藏
页数:18
相关论文
共 50 条
  • [31] Adaptive Sensor Management for Feature-Based Classification
    Jenkins, Karen
    Castanon, David A.
    49TH IEEE CONFERENCE ON DECISION AND CONTROL (CDC), 2010, : 522 - 527
  • [32] Geometric feature-based skin image classification
    Yang, Jinfeng
    Shi, Yihua
    Xiao, Mingliang
    ADVANCED INTELLIGENT COMPUTING THEORIES AND APPLICATIONS: WITH ASPECTS OF THEORETICAL AND METHODOLOGICAL ISSUES, 2007, 4681 : 1158 - +
  • [33] Feature-based fuzzy classification for interpretation of mammograms
    Iyer, NS
    Kandel, A
    Schneider, M
    FUZZY SETS AND SYSTEMS, 2000, 114 (02) : 271 - 280
  • [34] Feature-based interaction: an identification and classification methodology
    Hounsell, MD
    Case, K
    PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART B-JOURNAL OF ENGINEERING MANUFACTURE, 1999, 213 (04) : 369 - 380
  • [35] Classification of schizophrenia using feature-based morphometry
    U. Castellani
    E. Rossato
    V. Murino
    M. Bellani
    G. Rambaldelli
    C. Perlini
    L. Tomelleri
    M. Tansella
    P. Brambilla
    Journal of Neural Transmission, 2012, 119 : 395 - 404
  • [36] Deep feature-based automatic classification of mammograms
    Arora, Ridhi
    Rai, Prateek Kumar
    Raman, Balasubramanian
    MEDICAL & BIOLOGICAL ENGINEERING & COMPUTING, 2020, 58 (06) : 1199 - 1211
  • [37] Optical beam classification using deep learning: A comparison with rule- and feature-based classification
    Alom, Md. Zahangir
    Awwal, Abdul A. S.
    Lowe-Webb, Roger
    Taha, Tarek M.
    OPTICS AND PHOTONICS FOR INFORMATION PROCESSING XI, 2017, 10395
  • [38] Land Cover Classification based on Deep Convolutional Neural Network with Feature-based Data Augmentation
    Wang, Bo
    Huang, Chengeng
    Guo, Yuhua
    Tao, Jiahui
    JOURNAL OF IMAGING SCIENCE AND TECHNOLOGY, 2021, 65 (01)
  • [39] AUTOMATED FEATURE-BASED REGISTRATION TECHNIQUES FOR SATELLITE IMAGERY
    Okorie, Azubuike
    Makrogiannis, Sokratis
    2017 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS), 2017, : 5137 - 5140
  • [40] Improving the ocean initialization of coupled hurricane-ocean models using feature-based data assimilation
    Yablonsky, Richard M.
    Ginis, Isaac
    MONTHLY WEATHER REVIEW, 2008, 136 (07) : 2592 - 2607