<p>In this thesis, we study the topic of ambiguity when detecting object instances in scenes with severe clutter and occlusions. Our work focuses on the three key areas: (1) objects that have ambiguous features, (2) objects where discriminative point-based features cannot be reliably extracted, and (3) occlusions.</p> <p>Current approaches for object instance detection rely heavily on matching discriminative point-based features such as SIFT. While one-to-one correspondences between an image and an object can often be generated, these correspondences cannot be obtained when objects have ambiguous features due to similar and repeated patterns. We present the Discriminative Hierarchical Matching (DHM) method which preserves feature ambiguity ...
This thesis focuses on the problem of object detection under partial occlusion in complex scenes thr...
Multi-scale window scanning has been popular in object detection but it generalizes poorly to comple...
International audienceIn this paper we describe an approach to recognizing poorly textured objects, ...
In this thesis, we study the topic of ambiguity when detecting object instances in scenes with sever...
Abstract—Occlusions are common in real world scenes and are a major obstacle to robust object detect...
<p>We present a unified occlusion model for object instance detection under arbitrary viewpoint. Whe...
One of the fundamental problems of computer vision is to detect and localize objectssuch as humans a...
We present a robust learning based instance recognition framework from single view point clouds. Our...
We propose a novel framework for detecting multiple ob-jects from a single image and reasoning about...
Abstract. We present a robust learning based instance recognition frame-work from single view point ...
Despite the great progress achieved in recognizing ob-jects as 2D bounding boxes in images, it is st...
Abstract—The presence of occluders significantly impacts object recognition accuracy. However, occlu...
Telling "what is where", object detection is a fundamental problem in computer vision and has a broa...
Occlusions and disocclusions are essential cues for human perception in understanding the layout of ...
Object detection is used widely in smart cities including safety monitoring, traffic control, and ca...
This thesis focuses on the problem of object detection under partial occlusion in complex scenes thr...
Multi-scale window scanning has been popular in object detection but it generalizes poorly to comple...
International audienceIn this paper we describe an approach to recognizing poorly textured objects, ...
In this thesis, we study the topic of ambiguity when detecting object instances in scenes with sever...
Abstract—Occlusions are common in real world scenes and are a major obstacle to robust object detect...
<p>We present a unified occlusion model for object instance detection under arbitrary viewpoint. Whe...
One of the fundamental problems of computer vision is to detect and localize objectssuch as humans a...
We present a robust learning based instance recognition framework from single view point clouds. Our...
We propose a novel framework for detecting multiple ob-jects from a single image and reasoning about...
Abstract. We present a robust learning based instance recognition frame-work from single view point ...
Despite the great progress achieved in recognizing ob-jects as 2D bounding boxes in images, it is st...
Abstract—The presence of occluders significantly impacts object recognition accuracy. However, occlu...
Telling "what is where", object detection is a fundamental problem in computer vision and has a broa...
Occlusions and disocclusions are essential cues for human perception in understanding the layout of ...
Object detection is used widely in smart cities including safety monitoring, traffic control, and ca...
This thesis focuses on the problem of object detection under partial occlusion in complex scenes thr...
Multi-scale window scanning has been popular in object detection but it generalizes poorly to comple...
International audienceIn this paper we describe an approach to recognizing poorly textured objects, ...