Skip to main content
Subscribe
Log In
More
Log in via Institution
Log in via OpenAthens
Log in via SAVIR
Log in using your username and password
For personal accounts OR managers of institutional accounts
Username
*
Password
*
Forgot your log in details?
Register a new account?
Forgot
your user name or password?
Basket
Search
More
Search for this keyword
Advanced search
Latest content
Current issue
Archive
Authors
About
Podcast
Search for this keyword
Advanced search
Close
More
Main menu
Latest content
Current issue
Archive
Authors
About
Podcast
Subscribe
Log in
More
Log in via Institution
Log in via OpenAthens
Log in via SAVIR
Log in using your username and password
For personal accounts OR managers of institutional accounts
Username
*
Password
*
Forgot your log in details?
Register a new account?
Forgot
your user name or password?
BMJ Journals
You are here
Home
Archive
Volume 28, Issue Suppl 2
430 Training neural networks to identify built environment features for pedestrian safety
Email alerts
Article metrics
Article menu
Article
Text
Article
info
Citation
Tools
Share
Rapid Responses
Article
metrics
Alerts
PDF
Abstracts
430 Training neural networks to identify built environment features for pedestrian safety
Online download statistics by month:
Online download statistics by month: November 2022 to October 2024
Abstract
Full
Pdf
Nov 2022
51
0
13
Dec 2022
143
0
8
Jan 2023
108
0
8
Feb 2023
101
0
4
Mar 2023
27
0
0
Apr 2023
38
0
0
May 2023
13
0
1
Jun 2023
96
0
1
Jul 2023
66
0
0
Aug 2023
13
0
0
Sep 2023
15
0
0
Oct 2023
24
0
1
Nov 2023
36
0
2
Dec 2023
28
0
1
Jan 2024
4
0
0
Feb 2024
19
0
0
Mar 2024
58
0
1
Apr 2024
38
0
0
May 2024
15
0
0
Jun 2024
22
0
1
Jul 2024
62
0
2
Aug 2024
6
0
1
Sep 2024
21
0
0
Oct 2024
11
0
1
Total
1015
0
45
Read the full text or download the PDF:
Subscribe
Log in
Log in via Institution
Log in via OpenAthens
Log in via SAVIR
Log in using your username and password
For personal accounts OR managers of institutional accounts
Username
*
Password
*
Forgot your log in details?
Register a new account?
Forgot
your user name or password?