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Featured researches published by Hiroto Higa.


Remote Sensing | 2017

Multi-Algorithm Indices and Look-Up Table for Chlorophyll-a Retrieval in Highly Turbid Water Bodies Using Multispectral Data

Salem Salem; Hiroto Higa; Hyungjun Kim; Komatsu Kazuhiro; Hiroshi Kobayashi; Kazuo Oki; Taikan Oki

Many approaches have been proposed for monitoring the eutrophication of Case 2 waters using remote sensing data. Semi-analytical algorithms and spectrum matching are two major approaches for chlorophyll-a (Chla) retrieval. Semi-analytical algorithms provide indices correlated with phytoplankton characteristics, (e.g., maximum and minimum absorption peaks). Algorithms’ indices are correlated with measured Chla through the regression process. The main drawback of the semi-analytical algorithms is that the derived relation is location and data limited. Spectrum matching and the look-up table approach rely on matching the measured reflectance with a large library of simulated references corresponding to wide ranges of water properties. The spectral matching approach taking hyperspectral measured reflectance as an input, leading to difficulties in incorporating data from multispectral satellites. Consequently, multi-algorithm indices and the look-up table (MAIN-LUT) technique is proposed to combine the merits of semi-analytical algorithms and look-up table, which can be applied to multispectral data. Eight combinations of four algorithms (i.e., 2-band, 3-band, maximum chlorophyll index, and normalized difference chlorophyll index) are investigated for the MAIN-LUT technique. In situ measurements and Medium Resolution Imaging Spectrometer (MERIS) sensor data are used to validate MAIN-LUT. In general, the MAIN-LUT provide a comparable retrieval accuracy with locally tuned algorithms. The most accurate of the locally tuned algorithms varied among datasets, revealing the limitation of these algorithms to be applied universally. In contrast, the MAIN-LUT provided relatively high retrieval accuracy for Tokyo Bay (R2 = 0.692, root mean square error (RMSE) = 21.4 mg m−3), Lake Kasumigaura (R2 = 0.866, RMSE = 11.3 mg m−3), and MERIS data over Lake Kasumigaura (R2 = 0.57, RMSE = 36.5 mg m−3). The simulated reflectance library of MAIN-LUT was generated based on inherent optical properties of Tokyo Bay; however, the MAIN-LUT also provided high retrieval accuracy for Lake Kasumigaura. MAIN-LUT could capture the spatial and temporal distribution of Chla concentration for Lake Kasumigaura.


Sensors | 2017

Assessment of Chlorophyll-a Algorithms Considering Different Trophic Statuses and Optimal Bands

Salem Salem; Hiroto Higa; Hyungjun Kim; Hiroshi Kobayashi; Kazuo Oki; Taikan Oki

Numerous algorithms have been proposed to retrieve chlorophyll-a concentrations in Case 2 waters; however, the retrieval accuracy is far from satisfactory. In this research, seven algorithms are assessed with different band combinations of multispectral and hyperspectral bands using linear (LN), quadratic polynomial (QP) and power (PW) regression approaches, resulting in altogether 43 algorithmic combinations. These algorithms are evaluated by using simulated and measured datasets to understand the strengths and limitations of these algorithms. Two simulated datasets comprising 500,000 reflectance spectra each, both based on wide ranges of inherent optical properties (IOPs), are generated for the calibration and validation stages. Results reveal that the regression approach (i.e., LN, QP, and PW) has more influence on the simulated dataset than on the measured one. The algorithms that incorporated linear regression provide the highest retrieval accuracy for the simulated dataset. Results from simulated datasets reveal that the 3-band (3b) algorithm that incorporate 665-nm and 680-nm bands and band tuning selection approach outperformed other algorithms with root mean square error (RMSE) of 15.87 mg·m−3, 16.25 mg·m−3, and 19.05 mg·m−3, respectively. The spatial distribution of the best performing algorithms, for various combinations of chlorophyll-a (Chla) and non-algal particles (NAP) concentrations, show that the 3b_tuning_QP and 3b_680_QP outperform other algorithms in terms of minimum RMSE frequency of 33.19% and 60.52%, respectively. However, the two algorithms failed to accurately retrieve Chla for many combinations of Chla and NAP, particularly for low Chla and NAP concentrations. In addition, the spatial distribution emphasizes that no single algorithm can provide outstanding accuracy for Chla retrieval and that multi-algorithms should be included to reduce the error. Comparing the results of the measured and simulated datasets reveal that the algorithms that incorporate the 665-nm band outperform other algorithms for measured dataset (RMSE = 36.84 mg·m−3), while algorithms that incorporate the band tuning approach provide the highest retrieval accuracy for the simulated dataset (RMSE = 25.05 mg·m−3).


Remote Sensing | 2017

Evaluation of MERIS Chlorophyll-a Retrieval Processors in a Complex Turbid Lake Kasumigaura over a 10-Year Mission

Salem Salem; Marie Strand; Hiroto Higa; Hyungjun Kim; Komatsu Kazuhiro; Kazuo Oki; Taikan Oki

Abstract: The chlorophyll-a (Chla) products of seven processors developed for the Medium Resolution Imaging Spectrometer (MERIS) sensor were evaluated. The seven processors, based on a neural network and band height, were assessed over an optically complex water body with Chla concentrations of 8.10–187.40 mg∙m−3 using 10-year MERIS archival data. These processors were adopted for the Ocean and Land Color Instrument (OLCI) sensor. Results indicated that the four processors of band height (i.e. the Maximum Chlorophyll Index (MCI_L1); and Fluorescence Line Height (FLH_L1)); neural network (i.e. Eutrophic Lake (EUL); and Case 2 Regional (C2R)) possessed reasonable retrieval accuracy with root mean square error (R2) in the range of 0.42–0.65. However, these processors underestimated the retrieved Chla > 100 mg∙m−3, reflecting the limitation of the band height processors to eliminate the influence of non-phytoplankton matter and highlighting the need to train the neural network for highly turbid waters. MCI_L1 outperformed other processors during the calibration and validation stages (R2 = 0.65, Root mean square error (RMSE) = 22.18 mg∙m−3, the mean absolute relative error (MARE) = 36.88%). In contrast, the results from the Boreal Lake (BOL) and Free University of Berlin (FUB) processors demonstrated their inadequacy to accurately retrieve Chla concentration > 50 mg∙m−3, mainly due to the limitation of the training datasets that resulted in a high MARE for BOL (56.20%) and FUB (57.00%). Mapping the spatial distribution of Chla concentrations across Lake Kasumigaura using the seven processors showed that all processors—except for the BOL and FUB—were able to accurately capture the Chla distribution for moderate and high Chla concentrations. In addition, MCI_L1 and C2R processors were evaluated over 10-years of monthly measured Chla as they demonstrated the best retrieval accuracy from both groups (i.e. band height and neural network, respectively). The retrieved Chla of MCI_L1 was more accurate at tracking seasonal and annual variation in Chla than C2R, with only slight overestimation occurring during the springtime.


Journal of Advanced Simulation in Science and Engineering | 2015

Numerical Simulation and Remote Sensing for the Analysis of Blue Tide Distribution in Tokyo Bay in September 2012

Hiroto Higa; Yukio Koibuchi; Hiroshi Kobayashi; Mitsuhiro Toratani; Yuji Sakuno


The 9th International Conference on Asia and Pacific Coasts 2017 (APAC 2017) | 2017

A Study on Coastal Erosion and Deposition Processes in Subang, Indonesia

S. Kikuyama; Takayuki Suzuki; Jun Sasaki; Hendra Achiari; S.A. Soendjoyo; Hiroto Higa; A. Wiyono


Journal of Japan Society of Civil Engineers | 2017

ESTIMATION OF SALINITY DISTRIBUTIONS BASED ON THE OPTICAL PROPERTY OF COLOR DISSOLVED ORGANIC MATTER BY THE GEOSTATIONARY OCEAN CLOLOR SATELLITE IN TOKYO BAY

Hiroto Higa; Tomohiro Fukuda; Kazuya Miyashita; Yoshiyuki Nakamura; Takayuki Suzuki


Journal of Japan Society of Civil Engineers | 2017

APPLICATION OF FORESHORE BEACH PROFILE CHANGE MODEL CONSIDERING THE EFFECT OF BEACH SLOPE

Naoto Mitourida; Takayuki Suzuki; Hiroto Higa


Journal of Japan Society of Civil Engineers | 2017

A STUDY OF SEDIMENT MOVEMENTS DURING CALM WAVE CONDITIONS USING FLUORESCENT SAND TRACERS

Takayuki Suzuki; Yu Inami; Shuhei Sakihama; Hiroto Higa; Yoshiyuki Nakamura; Shinichi Yanagishima


Journal of Japan Society of Civil Engineers | 2017

A STUDY ON UPWELLING EVENTS WITH AND WITHOUT BLUE TIDE FORMATION IN TOKYO BAY

Kazuya Miyashita; Yoshiyuki Nakamura; Hiroto Higa; Yoji Tanaka; Hikaru Ito; Takuya Ikezu; Kazunori Kanaya; Takayuki Suzuki


Journal of Japan Society of Civil Engineers | 2017

CHARACTERISTICS OF SEABED SURFACE SEDIMENT MOVEMENTS USING FLUORESCENT SAND TRACERS

Takayuki Suzuki; Asumi Kawagoe; Shin-ichi Yanagishima; Hiroto Higa

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Takayuki Suzuki

Yokohama National University

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Yoshiyuki Nakamura

Yokohama National University

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Yoji Tanaka

Yokohama National University

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