Abstract

Spartina alterniflora (S. alterniflora) is one of the worst plant invaders in the coastal wetlands of China. Accurate and repeatable mapping of S. alterniflora invasion is essential to develop cost-effective management strategies for conserving native biodiversity. Traditional remote-sensing-based mapping methods require a lot of fieldwork for sample collection. Moreover, our ability to detect this invasive species is still limited because of poor spectral separability between S. alterniflora and its co-dominant native plants. Therefore, we proposed a novel scheme that uses an ensemble one-class classifier (EOCC) in combination with phenological Normalized Difference Vegetation Index (NDVI) time-series analysis (TSA) to detect S. alterniflora. We evaluated the performance of the EOCC algorithm in two scenarios, i.e., single-scene analysis (SSA) and NDVI-TSA in the core zones of Yancheng National Natural Reserve (YNNR). Meanwhile, a fully supervised classifier support vector machine (SVM) was tested in the two scenarios for comparison. With these scenarios, the crucial phenological stages and the advantage of phenological NDVI-TSA in S. alterniflora recognition were also investigated. Results indicated the EOCC using only positive training data performed similarly well with the SVM trained on complete training data in the YNNR. Moreover, the EOCC algorithm presented a more robust transferability with notably higher classification accuracy than the SVM when being transferred to a second site, without a second training. Furthermore, when combined with the phenological NDVI-TSA, the EOCC algorithm presented more balanced sensitivity–specificity result, showing slightly better transferability than it performed in the best phenological stage (i.e., senescence stage of November). The achieved results (overall accuracy (OA), Kappa, and true skill statistic (TSS) were 92.92%, 0.843, and 0.834 for the YNNR, and OA, Kappa, and TSS were 90.94%, 0.815, and 0.825 for transferability to the non-training site) suggest that our detection scheme has a high potential for the mapping of S. alterniflora across different areas, and the EOCC algorithm can be a viable alternative to traditional supervised classification method for invasive plant detection.

Highlights

  • Biological invasion has a significant impact on biodiversity, conservation, and ecological security in coastal wetlands [1]

  • We reported a test of the ensemble one-class classifier (EOCC) algorithm for S. alterniflora detection under two scenarios, single-scene analysis (SSA) and Normalized Difference Vegetation Index (NDVI) time-series analysis (NDVI-TSA), in the core zone of Yancheng National Natural Reserve (YNNR)

  • We evaluated the performance of 12 monthly SSAs in identifying S. alterniflora by using four one-class classification (OCC) algorithms (i.e., EOCC, maximum entropy (MaxEnt), biased support vector machines (BSVM), and positive and unlabeled deep neural network (PUDNN)), along with a standard supervised classification method (i.e., support vector machine (SVM)) based on 12 single-date GF-1 WFV images

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Summary

Introduction

Biological invasion has a significant impact on biodiversity, conservation, and ecological security in coastal wetlands [1]. The invasion of Spartina alterniflora (S. alterniflora) is one of the most obvious ecological problems in China’s eastern coastal wetland ecosystems [2]. The perennial herb plant, S. alterniflora, native to the Atlantic coast of the Americas from Newfoundland, Canada, and South to Northern Argentina, was introduced to China’s eastern coast in the 1970s for beach protection, siltation promotion, and saline soil amelioration. Its extensive and rapid expansion resulted in serious ecological problems, such as water and soil pollution, reduction of bird biodiversity, and change of estuarine sediment dynamics [4,5]. The acquisition of quantitative data, in particular, the up-to-date spatial distribution of S. alterniflora, is indispensably crucial for conservation agencies to effectively respond to the expansion of S. alterniflora and to develop timely protection strategies [6]

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