Spectral distortion-based flood detection in multi-temporal images fusion techniques
Subject Areas :حسن حسنی مقدم 1 , Mohammad Javad Nateghi 2
1 - کارشناس ارشد سنجش از دور و GIS، دانشگاه خوارزمی تهران
2 - MA Electronic engineering, Information Thechnology of Imam Hosein University, Tehran, Iran
Keywords: Data Fusion, Change detection, Spectral distortion, Flood extent,
Abstract :
In changes detection process, the choice of information extraction method plays an important role in the quality of final changes detecting. In this study, Landsat 8 multi-temporal data fusion method based on spectral distortion was used to detect changes and to determine the range of floods. For this reason, both pre and post flood images were fused using the Gram Schmitt algorithm to increase spatial resolution of images. In the following, three algorithms, Gram Schmitt, IHS, PCA, were used to detect changes and determine the extent of flood. In this study, input of each algorithm was pre-flooded as a multicolor image and post-flood infrared image as a panchromatic image selected to determine the extent of flood using the spectral distortion generated in each algorithm. The results showed that the capability of data fusion method based on spectral distortion is very high in detecting of changes. The spectral distortion generated in IHS is the most accurate distortion and the output of this algorithm is highly consistent with the reference data. Also, the output of the Gram Schmitt algorithm has spectral distortions in the unchanged regions. The PCA algorithm, which is highly sensitive to inputs, distorts most image regions, which is not recommended for detecting changes based on spectral distortion.
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9] Ayele. G. T, Tebeje. A. K, Demissie. S. S, Belete. M. A, Jemberrie. M. A, Teshome. W. M., ... and Teshale, E. Z. (2018). “Time Series Land Cover Mapping and Change Detection Analysis Using Geographic Information System and Remote Sensing, Northern Ethiopia”, Air, Soil and Water Research, Vol (11).
[10] Deepthy. R and Vasuki. A.(2013). “Fusion of different images for change detection”, In ternational journal of computer application, pp. 28-37.
[11] EL Hattab. M. M.(2016). “Applying post classification change detection technique to monitor an Egyptian coastal zone”, The Egyptian journal of remote sensing and space science, Vol(19), pp. 23-36.
[12] Ferraris. V, Dobigeon. N, Wei. Q and Chabert. M.(2016). “Detecting changes between optical images of different spatial and spectral resolutions: a fusion baised approach”, Arxiv, pp. 1- 23.
[13] Francois Mas. J, Rodriguez. R. L, Lopez. R. G, Sanchez. J. L, Garduno. R. P and Flores. E. H.(2017). “land use land cover change detection combining automatic processing and visual interpretation”, European journal of remote sensing , Vol(50), pp. 626-635.
[14] Feng. W, Sui. H, Tu. J, Huang. W, Xu. Ch and Sun. K.(2018). “A novel change detection approach for multi temporal high resolution remote sensing images based on rotation forest and coarse to fine uncertainty analysis”, Remote sensing, Vol(10), pp. 1-22.
[15] Han. Y, Chang. A, Choi. S, Park. H and Choi. J.(2017). “An unsupervised algorithm for change detection in hyperspectral remote sensing data using synthetically fused image and derivative spectral profile”, Sensors, Vol(2017), pp. 1-14.
[16] Kafi. K. M, Shafri. H. Z. M, and Shariff, A. B. M. (2014). “An analysis of LULC change detection using remotely sensed data; A Case study of Bauchi City”, In IOP conference series: Earth and environmental science, Vol(20).
[17] Li. X, Zhao. Sh and Yang. H.(2017). “A bi-band binary mask based land use change detection using Landsat 8 OLI imagery”, Sustainability, Vol, (9), 47
18] Lv. Zh, Liu. T, Zhang. P, Benediktsson. J. A and Chen. Y.(2018). “Land cover change detection based on adaptive contextual information using bi-temporal remote sensing image”, Remote sensing, Vol(10), pp. 1-14.
[19] Lv. Z, Shi. W, Zhou. X and Benediktsson. J. A. (2017). “Semi-automatic system for land cover change detection using bi-temporal remote sensing images”. Remote Sensing, Vol (9), 1112.
[20] Makuti. S, Nex. F and Yang. M. Y.(2018). “multi temporal classification and change detection using UAV images”, ISPRS TC II Mid-term Symposium “Towards Photogrammetry 2020”, 4–7 June 2018, Riva del Garda, Italy (pp. 651-658). International Society for Photogrammetry and Remote Sensing (ISPRS).
[21] Onur. I, Maktav. D, Sari. M and Kemal Sönmez. N. (2009). “Change detection of land cover and land use using remote sensing and GIS: a case study in Kemer, Turkey”, International Journal of Remote Sensing, Vol (30), pp. 1749-1757.
[22] Pohl. C and Van Genderen. J. (2016). “Remote sensing image fusion: A practical guide”, Crc Press.
[23] Ramachandra. T. V and Kumar. U.(2004). “Geographic resources decision support system for land use land cover dynamics analysis”, FOSS/GRASS Users Conference - Bangkok, Thailand, 12-14 September. ISPRS, Vol(2), pp. 651-
658.
[24] Wang. G, Wang. H, Fan. W. F, Liu. Y and Chen. Ch.(2018). “Change detection of high resolution remote sensing images based on adaptive fusion of multiple feature”, ISPRS, Vol(3), pp. 1689-1694.
[25] Wang. B, Choi. J, Choi. S, Lee. S, Wu. P and Gao. Y.(2017). “Image fusion based land cover change detection using multi temporal high resolution images”, Remote sensing, Vol(9), pp. 1-19.
[26] Xiaodong. Zh, Jian Ya.