Aerial ungulate surveys with a combination of infrared and high-resolution natural colour images

被引:1
|
作者
Franke, U. [1 ]
Goll, B. [1 ]
Hohmann, U. [2 ]
Heurich, M. [3 ]
机构
[1] Aerosense Engn, D-67280 Quirnheim, Germany
[2] Inst Forest Ecol & Forestry, Div Forest & Wildlife Ecol, D-67705 Trippstadt, Germany
[3] Bavarian Forest Natl Pk, Dept Res & Documentat, D-94481 Grafenau, Germany
关键词
Aerial survey; Infrared camera; Microlight aircraft; Ungulates; Wildlife monitoring; COST-EFFECTIVENESS; DEER; POPULATION; ABUNDANCE; DENSITY; COUNTS;
D O I
暂无
中图分类号
X176 [生物多样性保护];
学科分类号
090705 ;
摘要
Aerial ungulate surveys with a combination of infrared and high-resolution natural colour images.-Information on animal population sizes is crucial for wildlife management. In aerial surveys, we used a silent light aircraft (microlight) and a combination of a computer-linked thermal infrared camera (640 x 480 pixels) to detect ungulates and high-resolution visual images (5,616 x 3,744 pixels) to identify specific species. From winter 2008/2009 to winter 2010/2011, we flew 48 missions over three German national parks and a German/French biosphere reserve. Within each study area, we followed non-overlapping linear transects with a flying altitude similar to 450 m above ground level and scanned 1,500-2,000 ha every two hours of flight time. Animals best detected and identified were red deer and fallow deer. Detection rates with respect to the type and density of vegetation cover ranged from 0% (young spruce) to 75% (young defoliated beech) to 100% (open land). This non-invasive method is cost-effective and suitable for many landscapes.
引用
收藏
页码:285 / 293
页数:9
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