© 2016 IEEE.Roadside vegetation classification has recently attracted increasing attention, due to its significance in applications such as vegetation growth management and fire hazard identification. Existing studies primarily focus on learning visible feature based classifiers or invisible feature based thresholds, which often suffer from a generalization problem to new data. This paper proposes an approach that aggregates pixel-level supervised classification and cluster-level texton occurrence within a voting strategy over superpixels for vegetation classification, which takes into account both generic features in the training data and local characteristics in the testing data. Class-specific artificial neural networks are trained to pr...
Automatically monitoring roadside fire risk plays a significant role in ensuring road safety by redu...
Master of ScienceDepartment of Computer ScienceWilliam H. HsuThis thesis addresses the tasks of dete...
A technique is described for doing land cover classification using a neural network to integrate and...
Automatic roadside vegetation segmentation is important for various real-world applications and one ...
Accurate classification of roadside vegetation plays a significant role in many practical applicatio...
Vegetation segmentation from roadside data is a field that has received relatively little attention ...
This paper proposes a new color-texture texton based approach for roadside vegetation classification...
In this paper, we present a novel Spatial Contextual Superpixel Model (SCSM) for vegetation classifi...
This paper presents a novel texture feature based multiple classifier technique and applies it to ro...
Roadside vegetation classification is an essential task for roadside fire risk assessment and enviro...
Accurate estimation of the biomass of roadside grasses plays a significant role in applications such...
Classification of roadside objects is very important task in identifying fire risk regions, analysin...
This paper presents a novel neural ensemble approach for classification of roadside images and compa...
Vegetation classification from satellite and aerial images is a common research area for fire risk a...
Roadside vegetation classification plays a significant role in many applications, such as grass fire...
Automatically monitoring roadside fire risk plays a significant role in ensuring road safety by redu...
Master of ScienceDepartment of Computer ScienceWilliam H. HsuThis thesis addresses the tasks of dete...
A technique is described for doing land cover classification using a neural network to integrate and...
Automatic roadside vegetation segmentation is important for various real-world applications and one ...
Accurate classification of roadside vegetation plays a significant role in many practical applicatio...
Vegetation segmentation from roadside data is a field that has received relatively little attention ...
This paper proposes a new color-texture texton based approach for roadside vegetation classification...
In this paper, we present a novel Spatial Contextual Superpixel Model (SCSM) for vegetation classifi...
This paper presents a novel texture feature based multiple classifier technique and applies it to ro...
Roadside vegetation classification is an essential task for roadside fire risk assessment and enviro...
Accurate estimation of the biomass of roadside grasses plays a significant role in applications such...
Classification of roadside objects is very important task in identifying fire risk regions, analysin...
This paper presents a novel neural ensemble approach for classification of roadside images and compa...
Vegetation classification from satellite and aerial images is a common research area for fire risk a...
Roadside vegetation classification plays a significant role in many applications, such as grass fire...
Automatically monitoring roadside fire risk plays a significant role in ensuring road safety by redu...
Master of ScienceDepartment of Computer ScienceWilliam H. HsuThis thesis addresses the tasks of dete...
A technique is described for doing land cover classification using a neural network to integrate and...