Cross Dataset Analysis and Network Architecture Repair for Autonomous
Car Lane Detection
- URL: http://arxiv.org/abs/2409.17158v1
- Date: Tue, 10 Sep 2024 20:27:49 GMT
- Title: Cross Dataset Analysis and Network Architecture Repair for Autonomous
Car Lane Detection
- Authors: Parth Ganeriwala, Siddhartha Bhattacharyya, Raja Muthalagu
- Abstract summary: We have performed cross dataset analysis and network architecture repair for the lane detection application in autonomous vehicles.
ERFCondLaneNet is an enhancement to the CondlaneNet used for lane identification framework to solve the difficulty of detecting lane lines with complex topologies.
- Score: 5.428120316375907
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Transfer Learning has become one of the standard methods to solve problems to
overcome the isolated learning paradigm by utilizing knowledge acquired for one
task to solve another related one. However, research needs to be done, to
identify the initial steps before inducing transfer learning to applications
for further verification and explainablity. In this research, we have performed
cross dataset analysis and network architecture repair for the lane detection
application in autonomous vehicles. Lane detection is an important aspect of
autonomous vehicles driving assistance system. In most circumstances, modern
deep-learning-based lane recognition systems are successful, but they struggle
with lanes with complex topologies. The proposed architecture, ERFCondLaneNet
is an enhancement to the CondlaneNet used for lane identification framework to
solve the difficulty of detecting lane lines with complex topologies like
dense, curved and fork lines. The newly proposed technique was tested on two
common lane detecting benchmarks, CULane and CurveLanes respectively, and two
different backbones, ResNet and ERFNet. The researched technique with
ERFCondLaneNet, exhibited similar performance in comparison to
ResnetCondLaneNet, while using 33% less features, resulting in a reduction of
model size by 46%.
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