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Evidential combination of pedestrian detectors

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Academic year: 2021

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Figure 1: (a) List of algorithms evaluated on the Caltech Pedestrian Benchmark. (b) Percent- Percent-age of detected pedestrians by at least k ∈ {1, 5,
Figure 2: Pedestrian detection results from three algorithms. The colour of the bounding boxes represents the score
Figure 3: (a) Logistic and isotonic calibration of the scores from the ‘HOG’ pedestrian detector
Figure 4: (a) Log-average miss rate for different values of the overlapping threshold

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