We introduce a new method that characterizes quantitatively local image descriptors in terms of their distinctiveness and robustness to geometric transformations and brightness deformations. The quantitative characterization of these properties is important for recognition systems based on local descriptors because it allows for the implementation of a classifier that selects descriptors based on their distinctiveness and robustness properties. This classification results in: (a) recognition time reduction due to a smaller number of descriptors present in the test image and in the database of model descriptors; (b) improvement of the recognition accuracy since only the most reliable descriptors for the recognition task are kept in the model...
Abstract—In this paper, we explore methods for learning local image descriptors from training data. ...
In this paper we summarize recent progress on local photo-metric invariants. The photometric invaria...
International audienceEven if lots of object invariant descriptors have been proposed in the literat...
We introduce a new method that characterizes typical local image features (e.g., SIFT, phase feature...
We introduce a new method that characterizes typical local image features (e.g., SIFT [9], phase fea...
International audienceTraditional content-based image retrieval systems typically compute a single d...
International audienceTraditional content-based image retrieval systems typically compute a single d...
International audienceTraditional content-based image retrieval systems typically compute a single d...
International audienceTraditional content-based image retrieval systems typically compute a single d...
Local descriptors are increasingly used for the task of object recognition because of their perceive...
One of the most important tasks of modern computer vision with a vast amount of applications is fi...
One of the most important tasks of modern computer vision with a vast amount of applications is fin...
Scale invariance and color invariance are two critical characters of robust local descriptors. For s...
Local descriptors are increasingly used for the task of object recognition because of their perceive...
International audienceIn this paper we summarize recent progress on local photometric invariants. Th...
Abstract—In this paper, we explore methods for learning local image descriptors from training data. ...
In this paper we summarize recent progress on local photo-metric invariants. The photometric invaria...
International audienceEven if lots of object invariant descriptors have been proposed in the literat...
We introduce a new method that characterizes typical local image features (e.g., SIFT, phase feature...
We introduce a new method that characterizes typical local image features (e.g., SIFT [9], phase fea...
International audienceTraditional content-based image retrieval systems typically compute a single d...
International audienceTraditional content-based image retrieval systems typically compute a single d...
International audienceTraditional content-based image retrieval systems typically compute a single d...
International audienceTraditional content-based image retrieval systems typically compute a single d...
Local descriptors are increasingly used for the task of object recognition because of their perceive...
One of the most important tasks of modern computer vision with a vast amount of applications is fi...
One of the most important tasks of modern computer vision with a vast amount of applications is fin...
Scale invariance and color invariance are two critical characters of robust local descriptors. For s...
Local descriptors are increasingly used for the task of object recognition because of their perceive...
International audienceIn this paper we summarize recent progress on local photometric invariants. Th...
Abstract—In this paper, we explore methods for learning local image descriptors from training data. ...
In this paper we summarize recent progress on local photo-metric invariants. The photometric invaria...
International audienceEven if lots of object invariant descriptors have been proposed in the literat...