Evaluation of Feature Ranking and Regression Methods for Oceanic Chlorophyll-a Estimation

被引:10
|
作者
Blix, Katalin [1 ]
Eltoft, Torbjorn [1 ,2 ]
机构
[1] Arctic Univ Norway, Univ Tromso, Dept Phys & Technol, N-9037 Tromso, Norway
[2] Arctic Univ Norway, Univ Tromso, Ctr Integrated Remote Sensing & Forecasting Arcti, N-9037 Tromso, Norway
关键词
Arctic; environmental monitoring; gaussian processes; optical imaging; ranking; regression analysis; LEAST-SQUARES REGRESSION; GAUSSIAN-PROCESSES; RETRIEVAL; ALGORITHMS; SELECTION; WATERS; PARAMETERS; MODEL; CO2;
D O I
10.1109/JSTARS.2018.2810704
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
This paper evaluates two alternative regression techniques for oceanic chlorophyll-a (Chl-a) content estimation. One of the investigated methodologies is the recently introduced Gaussian process regression (GPR) model. We explore two feature ranking methods derived for the GPR model, namely sensitivity analysis (SA) and automatic relevance determination (ARD). We also investigate a second regression method, the partial least squares regression (PLSR) for oceanic Chl-a content estimation. Feature relevance in the PLSR model can be accessed through the variable importance in projection (VIP) feature ranking algorithm. This paper thus analyzes three feature ranking models, SA, ARD, and VIP, which are all derived from different fundamental principles, and uses the ranked features as inputs to the GPR and PLSR to assess regression strengths. We compare the regression performances using some common performance measures, and show how the feature ranking methods can be used to find the lowest number of features to estimate oceanic Chl-a content by using the GPR and PLSR models, while still producing comparable performance to the state-of-the-art algorithms. We evaluate the models on a global MEdium Resolution Imaging Spectrometer matchup dataset. Our results show that the GPR model has the best regression performance for most of the input feature sets we used, and our conclusion is this model can favorably be used for Chl-a content retrieval, already with two features, ranked by either the SA or ARD methods.
引用
收藏
页码:1403 / 1418
页数:16
相关论文
共 50 条
  • [21] Estimation of Chlorophyll-a From Oceanographic Properties - An Indirect Approach
    Tiwari, Surya Prakash
    Adhikary, Subhrangshu
    Banerjee, Saikat
    2022 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS 2022), 2022, : 6872 - 6875
  • [22] Evaluation of Satellite Retrievals of Chlorophyll-a in the Arabian Gulf
    Al-Naimi, Noora
    Raitsos, Dionysios E.
    Ben-Hamadou, Radhouan
    Soliman, Yousria
    REMOTE SENSING, 2017, 9 (03)
  • [23] Application of neural networks to AVHRR chlorophyll-a and turbidity estimation
    Zhang, YZ
    Pulliainen, J
    Koponen, S
    Hallikainen, M
    OCEAN OPTICS: REMOTE SENSING AND UNDERWATER IMAGING, 2002, 4488 : 167 - 175
  • [24] DISTRIBUTION OF CHLOROPHYLL-a AND ESTIMATION OF PRIMARY PRODUCTION IN THE BOHAI SEA
    吕培顶
    费尊乐
    毛兴华
    张坤诚
    朱明远
    王艳香
    李保华
    夏滨
    ActaOceanologicaSinica, 1984, (04) : 559 - 567
  • [25] SPATIAL-DISTRIBUTION OF VIRUSES, BACTERIA AND CHLOROPHYLL-A IN NERITIC, OCEANIC AND ESTUARINE ENVIRONMENTS
    COCHLAN, WP
    WIKNER, J
    STEWARD, GF
    SMITH, DC
    AZAM, F
    MARINE ECOLOGY PROGRESS SERIES, 1993, 92 (1-2) : 77 - 87
  • [26] Machine Learning Automatic Model Selection Algorithm for Oceanic Chlorophyll-a Content Retrieval
    Blix, Katalin
    Eltoft, Torbjorn
    REMOTE SENSING, 2018, 10 (05):
  • [27] A Comparative Evaluation of Feature Ranking Methods for High Dimensional Bioinformatics Data
    Van Hulse, Jason
    Khoshgofiaar, Taghi M.
    Napolitano, Amri
    2011 IEEE INTERNATIONAL CONFERENCE ON INFORMATION REUSE AND INTEGRATION (IRI), 2011, : 315 - 320
  • [28] Evaluation of SeaWiFS chlorophyll-a in the Black and Mediterranean seas
    Sancak, S
    Besiktepe, ST
    Yilmaz, A
    Lee, M
    Frouin, R
    INTERNATIONAL JOURNAL OF REMOTE SENSING, 2005, 26 (10) : 2045 - 2060
  • [29] Feature ranking for multi-target regression
    Petkovic, Matej
    Kocev, Dragi
    Dzeroski, Saso
    MACHINE LEARNING, 2020, 109 (06) : 1179 - 1204
  • [30] Feature ranking for multi-target regression
    Matej Petković
    Dragi Kocev
    Sašo Džeroski
    Machine Learning, 2020, 109 : 1179 - 1204