TPE-Net: Track Point Extraction and Association Network for Rail Path Proposal Generation

02/11/2023
by   Jungwon Kang, et al.
0

One essential feature of an autonomous train is minimizing collision risks with third-party objects. To estimate the risk, the control system must identify topological information of all the rail routes ahead on which the train can possibly move, especially within merging or diverging rails. This way, the train can figure out the status of potential obstacles with respect to its route and hence, make a timely decision. Numerous studies have successfully extracted all rail tracks as a whole within forward-looking images without considering element instances. Still, some image-based methods have employed hard-coded prior knowledge of railway geometry on 3D data to associate left-right rails and generate rail route instances. However, we propose a rail path extraction pipeline in which left-right rail pixels of each rail route instance are extracted and associated through a fully convolutional encoder-decoder architecture called TPE-Net. Two different regression branches for TPE-Net are proposed to regress the locations of center points of each rail route, along with their corresponding left-right pixels. Extracted rail pixels are then spatially clustered to generate topological information of all the possible train routes (ego-paths), discarding non-ego-path ones. Experimental results on a challenging, publicly released benchmark show true-positive-pixel level average precision and recall of 0.9207 and 0.8721, respectively, at about 12 frames per second. Even though our evaluation results are not higher than the SOTA, the proposed regression pipeline performs remarkably in extracting the correspondences by looking once at the image. It generates strong rail route hypotheses without reliance on camera parameters, 3D data, and geometrical constraints.

READ FULL TEXT

page 1

page 2

page 3

page 4

page 6

research
06/27/2017

Training a Fully Convolutional Neural Network to Route Integrated Circuits

We present a deep, fully convolutional neural network that learns to rou...
research
07/02/2019

SkeletonNet: Shape Pixel to Skeleton Pixel

Deep Learning for Geometric Shape Understating has organized a challenge...
research
08/25/2019

Efficient Bidirectional Neural Machine Translation

The encoder-decoder based neural machine translation usually generates a...
research
03/17/2011

Finding Shortest Path for Developed Cognitive Map Using Medial Axis

this paper presents an enhancement of the medial axis algorithm to be us...
research
04/28/2014

Stereo on a budget

We propose an algorithm for recovering depth using less than two images....
research
04/09/2016

A Left-Looking Selected Inversion Algorithm and Task Parallelism on Shared Memory Systems

Given a sparse matrix A, the selected inversion algorithm is an efficien...
research
03/02/2018

Automated Map Reading: Image Based Localisation in 2-D Maps Using Binary Semantic Descriptors

We describe a novel approach to image based localisation in urban enviro...

Please sign up or login with your details

Forgot password? Click here to reset