Trainable classifier-fusion schemes: An application to pedestrian detection 论文
2009引用 231
Video Surveillance and Tracking MethodsAnomaly Detection Techniques and ApplicationsAutomated Road and Building Extraction
摘要
This work proposes a novel classifier-fusion scheme using learning algorithms, i.e. syntactic models, instead of the usual Bayesian or heuristic rules. Moreover, this paper complements the previous comparative studies on DaimlerChrysler Automotive Dataset, offering a set of complementary experiments using feature extractor and classifier combinations. The experimental results provide evidence of the effectiveness of our methods regarding false positive rate, AUC, and accuracy, which reached 96.67%.