Vegetation classification from satellite and aerial images is a common research area for fire risk assessment and environmental surveys for decades. Recently classification from video data obtained by vehicle mounted video in outdoor environments is receiving considerable attention due to the large number of real-world applications. However this is a very challenging task and requires novel research techniques. This paper presents an analysis of hybrid classification approach to distinguish vegetation in particularly the type of roadside grasses from videos recorded by the Queensland transport and main roads. The proposed framework can distinguish dense and non-dense grass regions from roadside video data. While most of the recent works foc...
Accurate classification of roadside vegetation plays a significant role in many practical applicatio...
This paper proposes a new color-texture texton based approach for roadside vegetation classification...
Meadow vegetation in the Krkonoše Mountains National Park is classified in this master thesis using ...
Vegetation classification from satellite and aerial images is a common research area for fire risk a...
Roadside vegetation classification is an essential task for roadside fire risk assessment and enviro...
This paper presents a novel texture feature based multiple classifier technique and applies it to ro...
This paper presents the work done in an attempt to develop an automatic computer vision system for t...
Roadside vegetation classification plays a significant role in many applications, such as grass fire...
Classification of roadside objects is very important task in identifying fire risk regions, analysin...
Automatically monitoring roadside fire risk plays a significant role in ensuring road safety by redu...
This research proposes a hybrid pixel-object framework: in which information from both pixels and ob...
Abstract—Research in the area of 3D city modelling from remote sensed data greatly developed in rece...
Analysis of important grass species distribution in the Krkonoše Mts. tundra using remote sensing Ab...
Rice lodging identification relies on manual in situ assessment and often leads to a compensation di...
Accurate estimation of the biomass of roadside grasses plays a significant role in applications such...
Accurate classification of roadside vegetation plays a significant role in many practical applicatio...
This paper proposes a new color-texture texton based approach for roadside vegetation classification...
Meadow vegetation in the Krkonoše Mountains National Park is classified in this master thesis using ...
Vegetation classification from satellite and aerial images is a common research area for fire risk a...
Roadside vegetation classification is an essential task for roadside fire risk assessment and enviro...
This paper presents a novel texture feature based multiple classifier technique and applies it to ro...
This paper presents the work done in an attempt to develop an automatic computer vision system for t...
Roadside vegetation classification plays a significant role in many applications, such as grass fire...
Classification of roadside objects is very important task in identifying fire risk regions, analysin...
Automatically monitoring roadside fire risk plays a significant role in ensuring road safety by redu...
This research proposes a hybrid pixel-object framework: in which information from both pixels and ob...
Abstract—Research in the area of 3D city modelling from remote sensed data greatly developed in rece...
Analysis of important grass species distribution in the Krkonoše Mts. tundra using remote sensing Ab...
Rice lodging identification relies on manual in situ assessment and often leads to a compensation di...
Accurate estimation of the biomass of roadside grasses plays a significant role in applications such...
Accurate classification of roadside vegetation plays a significant role in many practical applicatio...
This paper proposes a new color-texture texton based approach for roadside vegetation classification...
Meadow vegetation in the Krkonoše Mountains National Park is classified in this master thesis using ...