Abstract
Plantations of Panax notoginseng (PN), traditional herbal medicine for the prevention and treatment of vascular diseases, are expanding rapidly in China, especially in the Yunnan province of China, due to its increasing demands and prices and causing dramatic environmental concerns. However, existing information on its planting area and spatial distribution are limited. Here, we mapped the PN planting area by using a new integrated pixel- and object-based (IPOB) approach, the Random Forest (RF) classifier, and the high-resolution ZiYuan-3 (ZY-3) imagery. We improved the procedures of classification in three aspects: (1) a new spectral index—Normalized Difference PN Index (NDPI)—was proposed, (2) the efficiency and scale of segmentation were optimized by using the Bi-level Scale-sets Model (BSM), and (3) feature variables were selected through an iteration analysis from 99 feature variables (spectral, textural, geometric, and geographic). Compared with the pixel- and the object-based methods, the IPOB has the highest F1 score of 0.98 and also has high robustness in terms of user and producer accuracies (97% and 99%, respectively), following by the object-based method (F1 = 0.94) and the pixel-based method (F1 = 0.93). The high accuracy was expected since the target class has very distinctive spectral and textural characteristics. Although all three approaches showed reasonably high accuracies due to the application of the NDPI and optimized procedures, the result showed the outperformance of the proposed IPOB approach. The framework established in this study expects to apply for regional or national PN surveys extensively. The information on the area and spatial distribution of PN can guide the government on policy making for the planting and exporting of traditional Chinese medicine resources.
Highlights
IntroductionPanax notoginseng (PN) is a crucial ingredient for over 400 types of medicines and a significant export of herbs in China [1]
Some of the segmentation units were not Panax notoginseng (PN) patches (Figure 7c) because these segmentation units derived from the pixel-based classification result were misclassified due to their similar spectral features with PNs
We proposed a novel integrated pixel- and object-based (IPOB) approach by integrating pixel-based and object-based methods to generate PN mapping
Summary
Panax notoginseng (PN) is a crucial ingredient for over 400 types of medicines and a significant export of herbs in China [1]. It plays a vital role in preventing and treating vascular diseases in clinics, such as lowering blood fat and promoting blood circulation [2,3]. Yunnan province in China is an important production area for PN. With the rapid increase in prices and demands, the planting area of PN was remarkably expanded in the past few years [5]. This expansion promotes the income of farmers and contributes to the globalization of Chinese herbal medicine; on the other hand, 4.0/)
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