Recognizing aerial image categories is useful for scene annotation and surveillance. Local features have been demonstrated to be robust to image transformations, including occlusions and clutters. However, the geometric property of an aerial image (i.e., the topology and relative displacement of local features), which is key to discriminating aerial image categories, cannot be effectively represented by state-of-the-art generic visual descriptors. To solve this problem, we propose a recognition model that mines graphlets from aerial images, where graphlets are small connected subgraphs reflecting both the geometric property and color/texture distribution of an aerial image. More specifically, each aerial image is decomposed into a set of ba...
Abstract. Our current field of work is pixelwise classification and la-beling of multiple objects in...
International audienceThis paper presents a method for recognizing scene categories based on approxi...
This paper proposes the Bag of Visual Graphs (BoVG), a new approach to encode the spatial relationsh...
This paper presents a method for recognizing aerial image categories based on matching graphlets(i.e...
<p> Fine-grained image categorization is a challenging task aiming at distinguishing objects belong...
Copyright 2014 ACM. This paper proposes a novel fine-grained image categorization model where no obj...
Image scene recognition is a core technology for many aerial remote sensing applications. Different ...
<p> Aerial scene classification, which is a fundamental problem for remote sensing imagery, can aut...
Categorizing highly complex aerial scenes is quite strenuous due to the presence of detailed informa...
This paper presents a semantic method for aerial image segmentation. Multi-class aerial images are o...
Fine-grained image categories recognition is a challenging task aiming at distinguishing objects bel...
Spatial pyramid matching is a standard architecture for categorical image retrieval. However, its pe...
AbstractThis paper proposes a novel method for object-based classification in very high spatial reso...
In this paper we present a hierarchical and contextual model for aerial image understanding. Our mod...
This paper presents a vision-based indoor scene recognition method from aerial time-series images ob...
Abstract. Our current field of work is pixelwise classification and la-beling of multiple objects in...
International audienceThis paper presents a method for recognizing scene categories based on approxi...
This paper proposes the Bag of Visual Graphs (BoVG), a new approach to encode the spatial relationsh...
This paper presents a method for recognizing aerial image categories based on matching graphlets(i.e...
<p> Fine-grained image categorization is a challenging task aiming at distinguishing objects belong...
Copyright 2014 ACM. This paper proposes a novel fine-grained image categorization model where no obj...
Image scene recognition is a core technology for many aerial remote sensing applications. Different ...
<p> Aerial scene classification, which is a fundamental problem for remote sensing imagery, can aut...
Categorizing highly complex aerial scenes is quite strenuous due to the presence of detailed informa...
This paper presents a semantic method for aerial image segmentation. Multi-class aerial images are o...
Fine-grained image categories recognition is a challenging task aiming at distinguishing objects bel...
Spatial pyramid matching is a standard architecture for categorical image retrieval. However, its pe...
AbstractThis paper proposes a novel method for object-based classification in very high spatial reso...
In this paper we present a hierarchical and contextual model for aerial image understanding. Our mod...
This paper presents a vision-based indoor scene recognition method from aerial time-series images ob...
Abstract. Our current field of work is pixelwise classification and la-beling of multiple objects in...
International audienceThis paper presents a method for recognizing scene categories based on approxi...
This paper proposes the Bag of Visual Graphs (BoVG), a new approach to encode the spatial relationsh...