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A study of feature combination for vehicle detection based on image processing

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Academic year: 2020

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Figure

Figure 1: General scheme of the studied fusion approach. A stream of input images is received from a video captured in a traffic scene, together with the potential locations of vehicles (marked through dashed bounding boxes) obtained via an image segmentat
Table 2: Best accuracy results of V-HOG for each image region and their associated parameters (
Figure 3: Frequency response of the Gabor filter bank. The contours indicate the half-peak magnitude of the filter responses in the Gabor filter family
Table 3: Accuracy results of log-Gabor filters for the different image regions.
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