Multiple images have been widely used for scene understanding and navigation of unmanned ground vehicles in long term operations. However, as the amount of visual data in multiple images is huge, the cumulative error in many cases becomes untenable. This paper proposes a novel method that can extract features from a large dataset of multiple images efficiently. Then the membership K-means clustering is used for high dimensional features, and the large dataset is divided into N subdatasets to train N conditional random field (CRF) models based on superpixel. A Softmax subdataset selector is used to decide which one of the N CRF models is chosen as the prediction model for labeling images. Furthermore, some experiments are conducted to evalua...
Abstract — Traversable region detection is important for au-tonomous visual navigation of mobile rob...
Detecting, counting, and classifying objects represent the most primary and challenging tasks in the...
Along with the progress of the content-based image retrieval research and the development of the MPE...
We propose a novel multi label (ML) classification approach based on the Conditional Random fields ...
Automatic image classification is of major importance for a wide range of applications and is suppor...
During the continual transitions from lab research to real-world applications of vision-based algori...
Modern robotics systems typically possess sensors of different modalities. Segmenting scenes observe...
This thesis focuses on three topics in visual scene understanding, sorted from low level to high lev...
We propose a novel flexible and hierarchical object representation using heterogeneous feature descr...
We develop a single joint model which can classify images and label super-pixels, based on tree-stru...
Simultaneously segmenting and labeling images is a fun-damental problem in Computer Vision. In this ...
<p>Scene perception is a fundamental aspect of vision. Humans are capable of analyzing behaviorally-...
Image scene recognition is a core technology for many aerial remote sensing applications. Different ...
High-resolution urban image clustering has remained a challenging task. This is mainly because its p...
Outdoor scene understanding plays a key role for unmanned ground vehicles (UGVs) to navigate in com...
Abstract — Traversable region detection is important for au-tonomous visual navigation of mobile rob...
Detecting, counting, and classifying objects represent the most primary and challenging tasks in the...
Along with the progress of the content-based image retrieval research and the development of the MPE...
We propose a novel multi label (ML) classification approach based on the Conditional Random fields ...
Automatic image classification is of major importance for a wide range of applications and is suppor...
During the continual transitions from lab research to real-world applications of vision-based algori...
Modern robotics systems typically possess sensors of different modalities. Segmenting scenes observe...
This thesis focuses on three topics in visual scene understanding, sorted from low level to high lev...
We propose a novel flexible and hierarchical object representation using heterogeneous feature descr...
We develop a single joint model which can classify images and label super-pixels, based on tree-stru...
Simultaneously segmenting and labeling images is a fun-damental problem in Computer Vision. In this ...
<p>Scene perception is a fundamental aspect of vision. Humans are capable of analyzing behaviorally-...
Image scene recognition is a core technology for many aerial remote sensing applications. Different ...
High-resolution urban image clustering has remained a challenging task. This is mainly because its p...
Outdoor scene understanding plays a key role for unmanned ground vehicles (UGVs) to navigate in com...
Abstract — Traversable region detection is important for au-tonomous visual navigation of mobile rob...
Detecting, counting, and classifying objects represent the most primary and challenging tasks in the...
Along with the progress of the content-based image retrieval research and the development of the MPE...