## Method

ResNet with prior knowledges [la] [ResNetPK]

Submitted on 1 Sep. 2017 05:06 by
Xiaofeng Han (School of computer science and engineering, Nanjing University of Science and Technology, China)

 Running time: 0.4s Environment: GPU @ 1.5 Ghz (Python)

 Method Description: ResNet with prior knowledges in multiple layers Parameters: lr=1*10-6 Latex Bibtex: none

## Evaluation in Bird's Eye View

 Benchmark MaxF AP PRE REC FPR FNR UM_ROAD 93.78 % 89.01 % 94.78 % 92.81 % 2.33 % 7.19 % UMM_ROAD 95.45 % 92.27 % 96.26 % 94.65 % 4.04 % 5.35 % UU_ROAD 92.56 % 86.93 % 93.16 % 91.96 % 2.20 % 8.04 % URBAN_ROAD 94.25 % 89.66 % 95.07 % 93.45 % 2.67 % 6.55 %
This table as LaTeX

## Behavior Evaluation

The following plots show precision/recall curves for the bird's eye view evaluation.

## Distance-dependent Behavior Evaluation

The following plots show the F1 score/Precision/Hitrate with respect to the longitudinal distance which has been used for evaluation.

## Visualization of Results

The following images illustrate the performance of the method qualitatively on a couple of test images. We first show results in the perspective image, followed by evaluation in bird's eye view. Here, red denotes false negatives, blue areas correspond to false positives and green represents true positives.

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