An examination of object recognition challenge leaderboards (ILSVRC, PASCAL-VOC) reveals that the top-performing classifiers typically exhibit small differences amongst themselves in terms of error rate/mAP. To better differentiate the top performers, additional criteria are required. Moreover, the (test) images, on which the performance scores are based, predominantly contain fully visible objects. Therefore, ‘harder’ test images, mimicking the challenging conditions (e.g. occlusion) in which humans routinely recognize objects, need to be utilized for benchmarking. To address the concerns mentioned above, we make two contributions. First, we systematically vary the level of local objectpart content, global detail and spatial context in ima...
This extended abstract presents our recent work on fine-grained object recognition. Unlike existing ...
Fully supervised methods for semantic segmentation require pixel-level class masks to train, the cre...
We address various issues in learning and representation of visual object categories. A key componen...
Current research in the area of automatic visual object recognition heavily relies on testing the pe...
In this paper [6], we are interested in analyzing the effect of context in detection and segmentatio...
The Pascal Visual Object Classes (VOC) challenge is a benchmark in visual object category recognitio...
The ImageNet Large Scale Visual Recognition Challenge is a benchmark in object category classifi cat...
The Pascal Visual Object Classes (VOC) challenge is a benchmark in visual object category recognitio...
Robust low-level image features have been proven to be effective representations for a variety of vi...
A main theme in object detection are currently discrim-inative part-based models. The powerful model...
© 2014, Springer Science+Business Media New York. The Pascal Visual Object Classes (VOC) challenge c...
In this paper we study the role of context in existing state-of-the-art detection and segmentation a...
In this paper we study the role of context in existing state-of-the-art detection and segmentation a...
• Learning visual object models • Testing the performance of classification, detection and localizat...
Datasets are an integral part of contemporary object recognition research. They have been the chief ...
This extended abstract presents our recent work on fine-grained object recognition. Unlike existing ...
Fully supervised methods for semantic segmentation require pixel-level class masks to train, the cre...
We address various issues in learning and representation of visual object categories. A key componen...
Current research in the area of automatic visual object recognition heavily relies on testing the pe...
In this paper [6], we are interested in analyzing the effect of context in detection and segmentatio...
The Pascal Visual Object Classes (VOC) challenge is a benchmark in visual object category recognitio...
The ImageNet Large Scale Visual Recognition Challenge is a benchmark in object category classifi cat...
The Pascal Visual Object Classes (VOC) challenge is a benchmark in visual object category recognitio...
Robust low-level image features have been proven to be effective representations for a variety of vi...
A main theme in object detection are currently discrim-inative part-based models. The powerful model...
© 2014, Springer Science+Business Media New York. The Pascal Visual Object Classes (VOC) challenge c...
In this paper we study the role of context in existing state-of-the-art detection and segmentation a...
In this paper we study the role of context in existing state-of-the-art detection and segmentation a...
• Learning visual object models • Testing the performance of classification, detection and localizat...
Datasets are an integral part of contemporary object recognition research. They have been the chief ...
This extended abstract presents our recent work on fine-grained object recognition. Unlike existing ...
Fully supervised methods for semantic segmentation require pixel-level class masks to train, the cre...
We address various issues in learning and representation of visual object categories. A key componen...