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Keywords = Mai Po Nature Reserve

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16 pages, 1817 KiB  
Article
The Impact of Sustainable Tourism on Resident and Visitor Satisfaction—The Case of the Special Nature Reserve “Titelski Breg”, Vojvodina
by Igor Trišić, Snežana Štetić, Adina Nicoleta Candrea, Florin Nechita, Manuela Apetrei, Marko Pavlović, Tijana Stojanović and Marija Perić
Sustainability 2024, 16(7), 2720; https://doi.org/10.3390/su16072720 - 26 Mar 2024
Cited by 7 | Viewed by 2782
Abstract
The Special Nature Reserve “Titelski Breg” (TB) is a protected area (PA) of category I, located in the AP of Vojvodina in the south-eastern part of Bačka. The reserve covers an area of 496 ha. A protection zone covering an area of 8643 [...] Read more.
The Special Nature Reserve “Titelski Breg” (TB) is a protected area (PA) of category I, located in the AP of Vojvodina in the south-eastern part of Bačka. The reserve covers an area of 496 ha. A protection zone covering an area of 8643 ha has been established around the PA. The International Union for Conservation of Nature (IUCN) states that this PA is classified as a category IV habitat and species management area. Its good geographical and traffic position and close distance to Romania and Hungary, as well as the nation’s major cities, make this PA accessible to a sizable number of both domestic and foreign tourists. There are numerous plant and animal species in the reserve, which makes this area unique. The population living around this reserve has an exceptional and valuable cultural heritage, which represents significant complementary tourist motives. To examine the state of sustainable tourism (SuT) in TB and the impact of SuT on the satisfaction of the respondents (SoR), the PoS model of study was used. The quantitative methodology in this research included a questionnaire as the survey instrument for residents and visitors. There were 630 respondents altogether (400 locals and 230 guests). Four aspects of sustainability, economic, social, cultural, and institutional, were used to analyze the state of SuT in this PA. The study’s findings show that SuT significantly affected the SoR. Analyzing the role that additional protected areas may have in SuT can be supported by the research outcomes. Additionally, the proportion of each sustainability characteristic in SuT can suggest guidelines for national programs that aim to develop PAs and tourist development at the same time. Full article
(This article belongs to the Special Issue Sustainable Development of Ecotourism)
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16 pages, 1999 KiB  
Article
GF-5 Hyperspectral Data for Species Mapping of Mangrove in Mai Po, Hong Kong
by Luoma Wan, Yinyi Lin, Hongsheng Zhang, Feng Wang, Mingfeng Liu and Hui Lin
Remote Sens. 2020, 12(4), 656; https://doi.org/10.3390/rs12040656 - 17 Feb 2020
Cited by 59 | Viewed by 6442
Abstract
Hyperspectral data has been widely used in species discrimination of plants with rich spectral information in hundreds of spectral bands, while the availability of hyperspectral data has hindered its applications in many specific cases. The successful operation of the Chinese satellite, Gaofen-5 (GF-5), [...] Read more.
Hyperspectral data has been widely used in species discrimination of plants with rich spectral information in hundreds of spectral bands, while the availability of hyperspectral data has hindered its applications in many specific cases. The successful operation of the Chinese satellite, Gaofen-5 (GF-5), provides potentially promising new hyperspectral dataset with 330 spectral bands in visible and near infrared range. Therefore, there is much demand for assessing the effectiveness and superiority of GF-5 hyperspectral data in plants species mapping, particularly mangrove species mapping, to better support the efficient mangrove management. In this study, mangrove forest in Mai Po Nature Reserve (MPNR), Hong Kong was selected as the study area. Four dominant native mangrove species were investigated in this study according to the field surveys. Two machine learning methods, Random Forests and Support Vector Machines, were employed to classify mangrove species with Landsat 8, Simulated Hyperion and GF-5 data sets. The results showed that 97 more bands of GF-5 over Hyperion brought a higher over accuracy of 87.12%, in comparison with 86.82% from Hyperion and 73.89% from Landsat 8. The higher spectral resolution of 5 nm in GF-5 was identified as making the major contribution, especially for the mapping of Aegiceras corniculatum. Therefore, GF-5 is likely to improve the classification accuracy of mangrove species mapping via enhancing spectral resolution and thus has promising potential to improve mangrove monitoring at species level to support mangrove management. Full article
(This article belongs to the Special Issue Advanced Techniques for Spaceborne Hyperspectral Remote Sensing)
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17 pages, 4029 KiB  
Article
Classification of Mangrove Species Using Combined WordView-3 and LiDAR Data in Mai Po Nature Reserve, Hong Kong
by Qiaosi Li, Frankie Kwan Kit Wong and Tung Fung
Remote Sens. 2019, 11(18), 2114; https://doi.org/10.3390/rs11182114 - 11 Sep 2019
Cited by 38 | Viewed by 5396
Abstract
Mangroves have significant social, economic, environmental, and ecological values but they are under threat due to human activities. An accurate map of mangrove species distribution is required to effectively conserve mangrove ecosystem. This study evaluates the synergy of WorldView-3 (WV-3) spectral bands and [...] Read more.
Mangroves have significant social, economic, environmental, and ecological values but they are under threat due to human activities. An accurate map of mangrove species distribution is required to effectively conserve mangrove ecosystem. This study evaluates the synergy of WorldView-3 (WV-3) spectral bands and high return density LiDAR-derived elevation metrics for classifying seven species in mangrove habitat in Mai Po Nature Reserve in Hong Kong, China. A recursive feature elimination algorithm was carried out to identify important spectral bands and LiDAR (Airborne Light Detection and Ranging) metrics whilst appropriate spatial resolution for pixel-based classification was investigated for discriminating different mangrove species. Two classifiers, support vector machine (SVM) and random forest (RF) were compared. The results indicated that the combination of 2 m resolution WV-3 and LiDAR data yielded the best overall accuracy of 0.88 by SVM classifier comparing with WV-3 (0.72) and LiDAR (0.79). Important features were identified as green (510–581 nm), red edge (705–745 nm), red (630–690 nm), yellow (585–625 nm), NIR (770–895 nm) bands of WV-3, and LiDAR metrics relevant to canopy height (e.g., canopy height model), canopy shape (e.g., canopy relief ratio), and the variation of height (e.g., variation and standard deviation of height). LiDAR features contributed more information than spectral features. The significance of this study is that a mangrove species distribution map with satisfactory accuracy can be acquired by the proposed classification scheme. Meanwhile, with LiDAR data, vertical stratification of mangrove forests in Mai Po was firstly mapped, which is significant to bio-parameter estimation and ecosystem service evaluation in future studies. Full article
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20 pages, 10330 KiB  
Article
Evaluating the Effectiveness of Conservation on Mangroves: A Remote Sensing-Based Comparison for Two Adjacent Protected Areas in Shenzhen and Hong Kong, China
by Mingming Jia, Mingyue Liu, Zongming Wang, Dehua Mao, Chunying Ren and Haishan Cui
Remote Sens. 2016, 8(8), 627; https://doi.org/10.3390/rs8080627 - 29 Jul 2016
Cited by 57 | Viewed by 12626
Abstract
Mangroves are ecologically important ecosystems and globally protected. The purpose of this study was to evaluate the effectiveness of mangrove conservation efforts in two adjacent protected areas in China that were under the management policies of the Ramsar Convention (Mai Po Marshes Nature [...] Read more.
Mangroves are ecologically important ecosystems and globally protected. The purpose of this study was to evaluate the effectiveness of mangrove conservation efforts in two adjacent protected areas in China that were under the management policies of the Ramsar Convention (Mai Po Marshes Nature Reserve (MPMNR), Hong Kong) and China’s National Nature Reserve System (Futian Mangrove National Nature Reserve (FMNNR), Shenzhen). To achieve this goal, eleven Landsat images were chosen and classified, areal extent and landscape metrics were then calculated. The results showed that: from 1973–2015, the areal extent of mangroves in both reserves increased, but the net change for the MPMNR (281.43 hm2) was much higher than those of the FMNNR (101.97 hm2). In general, the area-weighted centroid of the mangroves in FMNNR moved seaward by approximately 120 m, whereas in the MPMNR, the centroid moved seaward even farther (410 m). Although both reserves saw increased integrality and connectivity of the mangrove patches, the patches in the MPMNR always had higher integrality than those in the FMNNR. We concluded that the mangroves in the MPMNR were more effectively protected than those in the FMNNR. This study may provide assistance to the formulation of generally accepted criteria for remote sensing-based evaluation of conservation effectiveness, and may facilitate the development of appropriate mangrove forest conservation and management strategies in other counties. Full article
(This article belongs to the Special Issue What can Remote Sensing Do for the Conservation of Wetlands?)
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15 pages, 2746 KiB  
Technical Note
Textural–Spectral Feature-Based Species Classification of Mangroves in Mai Po Nature Reserve from Worldview-3 Imagery
by Ting Wang, Hongsheng Zhang, Hui Lin and Chaoyang Fang
Remote Sens. 2016, 8(1), 24; https://doi.org/10.3390/rs8010024 - 31 Dec 2015
Cited by 137 | Viewed by 10764
Abstract
The identification of species within an ecosystem plays a key role in formulating an inventory for use in the development of conservation management plans. The classification of mangrove species typically involves intensive field surveys, whereas remote sensing techniques represent a cost-efficient means of [...] Read more.
The identification of species within an ecosystem plays a key role in formulating an inventory for use in the development of conservation management plans. The classification of mangrove species typically involves intensive field surveys, whereas remote sensing techniques represent a cost-efficient means of mapping and monitoring mangrove forests at large scales. However, the coarse spectral resolution of remote sensing technology has up until recently restricted the ability to identify individual species. The more recent development of very high-resolution spatial optical remote sensing sensors and techniques has thus provided new opportunities for the accurate mapping of species within mangrove forests over large areas. When dealing with the complex problems associated with discriminating among species, classifier performance could be enhanced through the adoption of more intrinsic features; such as textural and differential spectral features. This study explored the effectiveness of textural and differential spectral features in mapping mangrove inter-species obtained from WorldView-3 high-spatial-resolution imagery for mangrove species in Hong Kong. Due to the different arrangement of leaves, the branch density, and the average height and size of plants, we found that the differential spectral features could aid in reducing inner-species variability and increasing intra-species separation. Using a combination of textural and differential spectral features thus represents a promising tool for discriminating among mangrove species. Experimental results suggest that combining these features can greatly improve mapping accuracy, thereby providing more reliable mapping results. Full article
(This article belongs to the Special Issue Remote Sensing of Mangroves: Observation and Monitoring)
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