16th International IEEE Conference on Intelligent Transportation Systems (ITSC 2013) 2013
DOI: 10.1109/itsc.2013.6728473
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A new performance measure and evaluation benchmark for road detection algorithms

Abstract: Abstract-Detecting the road area and ego-lane ahead of a vehicle is central to modern driver assistance systems. While lane-detection on well-marked roads is already available in modern vehicles, finding the boundaries of unmarked or weakly marked roads and lanes as they appear in inner-city and rural environments remains an unsolved problem due to the high variability in scene layout and illumination conditions, amongst others. While recent years have witnessed great interest in this subject, to date no commo… Show more

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Cited by 577 publications
(325 citation statements)
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“…For the KITTI Vision road detection benchmark, performance is measured in the birds-eye view, while data is presented in ego view. The authors of (Fritsch et al, 2013) claim that the vehicle control usually happens in 2D space and therefore road detection should also be done in this space. A wrong classified pixel near the horizon in ego view represents a whole bunch of pixels in the birds-eye view.…”
Section: Benefit Of Dropout and Relu For Smaller Networkmentioning
confidence: 99%
“…For the KITTI Vision road detection benchmark, performance is measured in the birds-eye view, while data is presented in ego view. The authors of (Fritsch et al, 2013) claim that the vehicle control usually happens in 2D space and therefore road detection should also be done in this space. A wrong classified pixel near the horizon in ego view represents a whole bunch of pixels in the birds-eye view.…”
Section: Benefit Of Dropout and Relu For Smaller Networkmentioning
confidence: 99%
“…The most common metrics used for evaluating performance of lane detection algorithms are Precision, Recall, F-score, Accuracy [34], Receiver Operating Characteristic (ROC) curves and Dice Similarity Coefficient (DSC) [33]. Precision is the fraction of detected lanes markers that are actual lane markers.…”
Section: Performance Metrics Used For Lane Detection and Trackingmentioning
confidence: 99%
“…The implementation of the perception system has been done based on the perception sensors available in the KITTI dataset [19][20][21], which includes a Velodyne sensor and two pairs of stereo vision cameras. The federated perception architecture suggested to fuse sensor data from the KITTI dataset is shown in Figure 3 …”
Section: Model Descriptionmentioning
confidence: 99%