We show that histograms of keypoint descriptor distances can make useful features for visual recognition. Descriptor distances are often exhaustively computed between sets of keypoints, but besides finding the k-smallest distances the structure of the distribution of these distances has been largely overlooked. We highlight the potential of such information in the task of particular scene recognition. Discriminative scene signatures in the form of histograms of keypoint descriptor distances are constructed in a supervised manner. The distances are computed between properly selected reference keypoints and the keypoints detected in the input image. The signature is low dimensional, computationally cheap to obtain, and can distinguish a large...
This is the accepted version of the paper to appear at Pattern Recognition Letters (PRL). The final ...
International audienceWe tackle the problem of finding accurate and robust keypoint correspondences ...
We introduce a novel rich local descriptor of an image point, we call the (labeled) distance set, wh...
We present an unconventional way of using keypoints in the form of histograms of keypoint descriptor...
Current best local descriptors are learned on a large data set of matching and non-matching keypoint...
Keypoint detection is a basic step in many computer vision algorithms aimed at recognition of object...
The binary descriptors are the representation of choice for real-time keypoint matching. However, th...
In 3D object recognition, local feature-based recognition is known to be robust against occlusion an...
We introduce a novel rich local descriptor of an image point, we call the (labeled) distance set, wh...
In order to achieve high level of security in our everyday life we produce huge amount of data. Sign...
State-of-the-art keypoint detection algorithms have been designed to extract specific structures fro...
We propose a generalisation of the local feature matching framework, where keypoints are replaced by...
Keypoint detection is a basic step in many computer vision algorithms aimed at recognition of object...
none5noThe established approach to 3D keypoint detection consists in defining effective handcrafted ...
none4noKeypoint detection represents the first stage in the majority of modern computer vision pipel...
This is the accepted version of the paper to appear at Pattern Recognition Letters (PRL). The final ...
International audienceWe tackle the problem of finding accurate and robust keypoint correspondences ...
We introduce a novel rich local descriptor of an image point, we call the (labeled) distance set, wh...
We present an unconventional way of using keypoints in the form of histograms of keypoint descriptor...
Current best local descriptors are learned on a large data set of matching and non-matching keypoint...
Keypoint detection is a basic step in many computer vision algorithms aimed at recognition of object...
The binary descriptors are the representation of choice for real-time keypoint matching. However, th...
In 3D object recognition, local feature-based recognition is known to be robust against occlusion an...
We introduce a novel rich local descriptor of an image point, we call the (labeled) distance set, wh...
In order to achieve high level of security in our everyday life we produce huge amount of data. Sign...
State-of-the-art keypoint detection algorithms have been designed to extract specific structures fro...
We propose a generalisation of the local feature matching framework, where keypoints are replaced by...
Keypoint detection is a basic step in many computer vision algorithms aimed at recognition of object...
none5noThe established approach to 3D keypoint detection consists in defining effective handcrafted ...
none4noKeypoint detection represents the first stage in the majority of modern computer vision pipel...
This is the accepted version of the paper to appear at Pattern Recognition Letters (PRL). The final ...
International audienceWe tackle the problem of finding accurate and robust keypoint correspondences ...
We introduce a novel rich local descriptor of an image point, we call the (labeled) distance set, wh...