Accurate and reliable horticultural crop classification results are an important part of agricultural management. At present, research on orchard classification based on optical images in complex mountain areas is vulnerable to the influence of cloudy weather, especially in the summer, which leads to a lack of key phenological characteristics. To solve this problem, a parcel-level orchard mapping experiment with an irregular time series was carried out in Qixia City, China. Firstly, the candidate parcels in the study area were extracted from VHR images with a spatial resolution of 0.55 m based on RCF and DABNet models. The F1 score and area-based intersection-over-union (IoU) of the parcel extraction results were calculated. When the bounda...
In this landscape-scale study we explored the potential for multitemporal 10-day composite data from...
Vegetation indices, such as the normalized difference vegetation index (NDVI) or enhanced vegetation...
In this landscape-scale study we explored the potential for multitemporal 10-day composite data from...
Northern Slopes of Tianshan Mountain (NSTM) in Xinjiang hold significance as a principal agricultura...
Timely and accurate mapping of winter crop planting areas in China is important for food security as...
The accurate mapping of crops can provide effective information for regional agricultural management...
Accurately obtaining the multi-year spatial distribution information of crops combined with the corr...
It is important to develop or validate remote sensing methods to explore agricultural management and...
Most methods used for crop classification rely on the ground-reference data of the same year, which ...
Detecting the situation of cropland in the semi-arid area, north of China is very important for agri...
Geo-parcel based crop identification plays an important role in precision agriculture. It meets the ...
Crop identification in large irrigation districts is important for crop yield estimation, hydrologic...
Accurate acquisition of spatial and temporal distribution information for cropping systems is import...
Accurate and timely information about rice planting areas is essential for crop yield estimation, gl...
Agricultural land use and cropping patterns are closely related to food production, soil degradation...
In this landscape-scale study we explored the potential for multitemporal 10-day composite data from...
Vegetation indices, such as the normalized difference vegetation index (NDVI) or enhanced vegetation...
In this landscape-scale study we explored the potential for multitemporal 10-day composite data from...
Northern Slopes of Tianshan Mountain (NSTM) in Xinjiang hold significance as a principal agricultura...
Timely and accurate mapping of winter crop planting areas in China is important for food security as...
The accurate mapping of crops can provide effective information for regional agricultural management...
Accurately obtaining the multi-year spatial distribution information of crops combined with the corr...
It is important to develop or validate remote sensing methods to explore agricultural management and...
Most methods used for crop classification rely on the ground-reference data of the same year, which ...
Detecting the situation of cropland in the semi-arid area, north of China is very important for agri...
Geo-parcel based crop identification plays an important role in precision agriculture. It meets the ...
Crop identification in large irrigation districts is important for crop yield estimation, hydrologic...
Accurate acquisition of spatial and temporal distribution information for cropping systems is import...
Accurate and timely information about rice planting areas is essential for crop yield estimation, gl...
Agricultural land use and cropping patterns are closely related to food production, soil degradation...
In this landscape-scale study we explored the potential for multitemporal 10-day composite data from...
Vegetation indices, such as the normalized difference vegetation index (NDVI) or enhanced vegetation...
In this landscape-scale study we explored the potential for multitemporal 10-day composite data from...