While visual object detection with deep learning has received much attention in the past decade, cases when heavy intra-class occlusions occur have not been studied thoroughly. In this work, we propose a Non-Maximum-Suppression (NMS) algorithm that dramatically improves the detection recall while maintaining high precision in scenes with heavy occlusions. Our NMS algorithm is derived from a novel embedding mechanism, in which the semantic and geometric features of the detected boxes are jointly exploited. The embedding makes it possible to determine whether two heavily-overlapping boxes belong to the same object in the physical world. Our approach is particularly useful for car detection and pedestrian detection in urban scenes where occlus...
Abstract—Occlusions are common in real world scenes and are a major obstacle to robust object detect...
Telling "what is where", object detection is a fundamental problem in computer vision and has a broa...
Mathias M., Benenson R., Timofte R., Van Gool L., ''Handling occlusions with Franken-classifiers'', ...
Existing object detection frameworks in the deep learning field generally over-detect objects, and u...
One of the fundamental problems of computer vision is to detect and localize objectssuch as humans a...
Object detection is used widely in smart cities including safety monitoring, traffic control, and ca...
Advances in deep neural networks have led to significant improvement of object detection accuracy. H...
Non-maximum suppression (NMS) is used in virtually all state-of-the-art object detection pipelines. ...
The performance of object detection has steadily improved over the past decade, primarily due to imp...
Non-maximum suppression (NMS) is used in virtually all state-of-the-art object detection pipelines. ...
Rothe R., Guillaumin M., Van Gool L., ''Non-maximum suppression for object detection by passing mess...
In recent years, deep-learned object detectors have achieved great success in the computer vision do...
In this paper, we address the task of detecting semantic parts on partially occluded objects. We con...
In this thesis, we study the topic of ambiguity when detecting object instances in scenes with sever...
Despite monocular 3D object detection having recently made a significant leap forward thanks to the ...
Abstract—Occlusions are common in real world scenes and are a major obstacle to robust object detect...
Telling "what is where", object detection is a fundamental problem in computer vision and has a broa...
Mathias M., Benenson R., Timofte R., Van Gool L., ''Handling occlusions with Franken-classifiers'', ...
Existing object detection frameworks in the deep learning field generally over-detect objects, and u...
One of the fundamental problems of computer vision is to detect and localize objectssuch as humans a...
Object detection is used widely in smart cities including safety monitoring, traffic control, and ca...
Advances in deep neural networks have led to significant improvement of object detection accuracy. H...
Non-maximum suppression (NMS) is used in virtually all state-of-the-art object detection pipelines. ...
The performance of object detection has steadily improved over the past decade, primarily due to imp...
Non-maximum suppression (NMS) is used in virtually all state-of-the-art object detection pipelines. ...
Rothe R., Guillaumin M., Van Gool L., ''Non-maximum suppression for object detection by passing mess...
In recent years, deep-learned object detectors have achieved great success in the computer vision do...
In this paper, we address the task of detecting semantic parts on partially occluded objects. We con...
In this thesis, we study the topic of ambiguity when detecting object instances in scenes with sever...
Despite monocular 3D object detection having recently made a significant leap forward thanks to the ...
Abstract—Occlusions are common in real world scenes and are a major obstacle to robust object detect...
Telling "what is where", object detection is a fundamental problem in computer vision and has a broa...
Mathias M., Benenson R., Timofte R., Van Gool L., ''Handling occlusions with Franken-classifiers'', ...