DOIONLINE

DOIONLINE NO - IJACEN-IRAJ-DOIONLINE-4775

Publish In
International Journal of Advance Computational Engineering and Networking (IJACEN)-IJACEN
Journal Home
Volume Issue
Issue
Volume-4, Issue-6  ( Jun, 2016 )
Paper Title
Pedestrian Detection In Autonomous Driving Application Using Convolutional Neural Network
Author Name
R.Subhashni, E.Srie Vidhya Janani
Affilition
PG Scholar Computer Science and Engineering, Asst. Professor Computer Science and Engineering, Anna University Regional Centre Madurai
Pages
104-108
Abstract
Pedestrian detection is of high importance to autonomous driving applications. Methods based on Neural Network have shown significant improvements in detection rate, which makes them suitable for this application in which reducing the False Discovery Rate is very important. Convolutional neural network (CNN) has achieved great success in the field of computer vision. CNN takes input data only as image in fixed size and this arises problem in scaling. Hence this paper discusses a filter based feature extraction. Henceforth, the object identification is done without any size constraint. Pedestrian detection also faces the challenges of background clutter and large variations in pedestrian appearance due to pose and changes in viewpoint etc. One of the key contributions is also towards this issue by training the network accordingly. This paper ultimately focuses on reducing the false discovery rate and increasing the accuracy of the detection method. The precision predictive value obtained is 51.46% with a false discovery rate of 48.54% using the benchmark data. The FMeasure value is 65.35%. The number of iterations to minimize the error was achieved to be 1100 epoch and the classification rate of the input data as objects and background is 97.40%. Keywords— Convolutional Neural Network, Miss rate, False discovery rate, F-Measure.
  View Paper