We present an approach to the recognition of complexshaped objects in cluttered environments based on edge cues. We first use example images of the desired object in typical backgrounds to train a classifier cascade which determines whether edge pixels in an image belong to an instance of the object or the clutter. Presented with a novel image, we use the cascade to discard clutter edge pixels. The features used for this classification are localized, sparse edge density operations. Experiments validate the effectiveness of the technique for recognition of complex objects in cluttered indoor scenes under arbitrary out-of-image-plane rotation
We describe an appearance-based object recognition system using a keyed, multi-level context represe...
A combined shape descriptor for object recognition is presented, along with an offline and online le...
We present a method of recognizing three-dimensional objects in intensity images of cluttered scene...
We present an approach to the recognition of complexshaped objects in cluttered environments based o...
We present an approach to the recognition of complex-shaped objects in cluttered environments based ...
We present an approach to the recognition of complex-shaped objects in cluttered environments based ...
We frame the problem of object recognition from edge cues in terms of deter-mining whether individua...
International audienceIn this paper we describe an approach to recognizing poorly textured objects, ...
We present an approach to recognition of complex objects in cluttered 3-D scenes that does not requi...
In this paper, we show that simple edge characteristics in images, when judiciously combined, can re...
This paper presents a technique for shape-based recognition that fuses pixellevel and object-level a...
Abstract:- We discuss a novel method of visual detection of rigid objects (that are known to the sys...
This paper describes techniques to perform efficient and accurate recognition in difficult domains b...
This thesis is concerned with the design of a real time object recognition system. The ultimate goal...
We present a 3-D shape-based object recognition system for simultaneous recognition of multiple obje...
We describe an appearance-based object recognition system using a keyed, multi-level context represe...
A combined shape descriptor for object recognition is presented, along with an offline and online le...
We present a method of recognizing three-dimensional objects in intensity images of cluttered scene...
We present an approach to the recognition of complexshaped objects in cluttered environments based o...
We present an approach to the recognition of complex-shaped objects in cluttered environments based ...
We present an approach to the recognition of complex-shaped objects in cluttered environments based ...
We frame the problem of object recognition from edge cues in terms of deter-mining whether individua...
International audienceIn this paper we describe an approach to recognizing poorly textured objects, ...
We present an approach to recognition of complex objects in cluttered 3-D scenes that does not requi...
In this paper, we show that simple edge characteristics in images, when judiciously combined, can re...
This paper presents a technique for shape-based recognition that fuses pixellevel and object-level a...
Abstract:- We discuss a novel method of visual detection of rigid objects (that are known to the sys...
This paper describes techniques to perform efficient and accurate recognition in difficult domains b...
This thesis is concerned with the design of a real time object recognition system. The ultimate goal...
We present a 3-D shape-based object recognition system for simultaneous recognition of multiple obje...
We describe an appearance-based object recognition system using a keyed, multi-level context represe...
A combined shape descriptor for object recognition is presented, along with an offline and online le...
We present a method of recognizing three-dimensional objects in intensity images of cluttered scene...