AbstractÐWe present a method for predicting fundamental performance of object recognition. We assume that both scene data and model objects are represented by 2D point features and a data/model match is evaluated using a vote-based criterion. The proposed method considers data distortion factors such as uncertainty, occlusion, and clutter, in addition to model similarity. This is unlike previous approaches, which consider only a subset of these factors. Performance is predicted in two stages. In the first stage, the similarity between every pair of model objects is captured by comparing their structures as a function of the relative transformation between them. In the second stage, the similarity information is used along with statistical m...
This paper offers a compacted mechanism to carry out the performance evaluation work for an automati...
Current research in the area of automatic visual object recognition heavily relies on testing the pe...
The topics discussed here are network models of object recognition; a computational theory of recogn...
Performance prediction is a crucial step for transforming the field of object recognition from an ar...
We present a novel method for predicting the performance of an object recognition approach in the pr...
W e present a novel method f o r predicting the per-formance of a n object recognition approach in t...
We present a novel method for modeling the performance of a vote-based approach for target classific...
This paper addresses one of the fundamental problems en-countered in performance prediction for obje...
The difficulty of designing automatic target recognition (ATR) systems is that there are many source...
The implementation of computational systems to perform intensive operations often involves balancing...
This paper addresses the estimation of a small gallery size that can generate the optimal error esti...
This research features the rapid recognition of three dimensional objects, focusing on efficient ind...
This paper derives bounds on the performance of statistical object recognition systems, wherein an i...
Efficient probability modeling is indispensable for uncertainty quantification of the recognition da...
In this dissertation, we focus on several aspects of models that aim to predict performance of a fac...
This paper offers a compacted mechanism to carry out the performance evaluation work for an automati...
Current research in the area of automatic visual object recognition heavily relies on testing the pe...
The topics discussed here are network models of object recognition; a computational theory of recogn...
Performance prediction is a crucial step for transforming the field of object recognition from an ar...
We present a novel method for predicting the performance of an object recognition approach in the pr...
W e present a novel method f o r predicting the per-formance of a n object recognition approach in t...
We present a novel method for modeling the performance of a vote-based approach for target classific...
This paper addresses one of the fundamental problems en-countered in performance prediction for obje...
The difficulty of designing automatic target recognition (ATR) systems is that there are many source...
The implementation of computational systems to perform intensive operations often involves balancing...
This paper addresses the estimation of a small gallery size that can generate the optimal error esti...
This research features the rapid recognition of three dimensional objects, focusing on efficient ind...
This paper derives bounds on the performance of statistical object recognition systems, wherein an i...
Efficient probability modeling is indispensable for uncertainty quantification of the recognition da...
In this dissertation, we focus on several aspects of models that aim to predict performance of a fac...
This paper offers a compacted mechanism to carry out the performance evaluation work for an automati...
Current research in the area of automatic visual object recognition heavily relies on testing the pe...
The topics discussed here are network models of object recognition; a computational theory of recogn...