We present an improved, biologically inspired and multiscale keypoint operator. Models of single- and double-stopped hypercomplex cells in area V1 of the mammalian visual cortex are used to detect stable points of high complexity at multiple scales. Keypoints represent line and edge crossings, junctions and terminations at fine scales, and blobs at coarse scales. They are detected by applying first and second derivatives to responses of complex cells in combination with two inhibition schemes to suppress responses along lines and edges. A number of optimisations make our new algorithm much faster than previous biologically inspired models, achieving real-time performance on modern GPUs and competitive speeds on CPUs. In this paper we show t...
We present a biologically-inspired method for object detection which is capable of online and one-sh...
The biologically inspired model (BIM) proposed by Serre presents a promising solution to object cate...
While many models of biological object recognition share a common set of ‘‘broad-stroke’’ properties...
We present an improved, biologically inspired and multiscale keypoint operator. Models of single- an...
The primary visual cortex employs simple, complex and end-stopped cells to create a scale space of 1...
Best-performing object recognition algorithms employ a large number features extracted on a dense gr...
Keypoints (junctions) provide important information for focus-of-attention (FoA) and object categor...
Abstract. Most object recognition algorithms use a large number of descriptors extracted in a dense ...
Hypercolumns in area V1 contain frequency- and orientation-selective simple and complex cells for l...
We present a 3D representation that is based on the pro- cessing in the visual cortex by simple, co...
End-stopped cells in cortical area V1, which combine outputs of complex cells tuned to different ori...
Learning robust keypoint descriptors has become an active research area in the past decade. Matching...
Learning robust keypoint descriptors has become an active research area in the past decade. Matching...
End-stopped cells in cortical area V1, which combine out- puts of complex cells tuned to different ...
Best-performing object recognition algorithms employ a large number features extracted on a dense gr...
We present a biologically-inspired method for object detection which is capable of online and one-sh...
The biologically inspired model (BIM) proposed by Serre presents a promising solution to object cate...
While many models of biological object recognition share a common set of ‘‘broad-stroke’’ properties...
We present an improved, biologically inspired and multiscale keypoint operator. Models of single- an...
The primary visual cortex employs simple, complex and end-stopped cells to create a scale space of 1...
Best-performing object recognition algorithms employ a large number features extracted on a dense gr...
Keypoints (junctions) provide important information for focus-of-attention (FoA) and object categor...
Abstract. Most object recognition algorithms use a large number of descriptors extracted in a dense ...
Hypercolumns in area V1 contain frequency- and orientation-selective simple and complex cells for l...
We present a 3D representation that is based on the pro- cessing in the visual cortex by simple, co...
End-stopped cells in cortical area V1, which combine outputs of complex cells tuned to different ori...
Learning robust keypoint descriptors has become an active research area in the past decade. Matching...
Learning robust keypoint descriptors has become an active research area in the past decade. Matching...
End-stopped cells in cortical area V1, which combine out- puts of complex cells tuned to different ...
Best-performing object recognition algorithms employ a large number features extracted on a dense gr...
We present a biologically-inspired method for object detection which is capable of online and one-sh...
The biologically inspired model (BIM) proposed by Serre presents a promising solution to object cate...
While many models of biological object recognition share a common set of ‘‘broad-stroke’’ properties...