Zenodo.org will be unavailable for 2 hours on September 29th from 06:00-08:00 UTC. See announcement.

Journal article Open Access

Convolutional Neural Network Based Approach to Detect Pedestrians in Real-Time videos

Sandhya N; AnirudhMarathe; JS Dawood Ahmed; Aman Kumar; Harshith R

Sponsor(s)
Blue Eyes Intelligence Engineering and Sciences Publication(BEIESP)

Pedestrians in the vehicle way are in peril of being hit, along these lines making extreme damage walkers and vehicle inhabitants. Hence, constant person on foot identification was done through a set of recorded videos and the system detects the persons/pedestrians in the given input videos. In this survey, a continuous plan was proposed dependent on Aggregated Channel Features (ACF) and CPU. The proposed technique doesn't have to resize the information picture neither the video quality. We also use SVM with HOG and SVM with HAAR to detect the pedestrians. In addition, the Convolutional Neural Networks (CNN) were trained with a set of pedestrian images datasets and later tested on some test-set of pedestrian images. The analyses demonstrated that the proposed technique could be utilized to distinguish people on foot in the video with satisfactory mistake rates and high prediction accuracy. In this manner, it tends to be applied progressively for any real-time streaming of videos and also for prediction of pedestrians in prerecorded videos.

Files (828.4 kB)
Name Size
A81371110120.pdf
md5:67ca72d300cbe4c17cc0d2ba71d6a73d
828.4 kB Download
40
33
views
downloads
Views 40
Downloads 33
Data volume 27.3 MB
Unique views 37
Unique downloads 32

Share

Cite as