This paper proposes to detect pedestrians in infrared images at night through the YOLO-V3 detection framework.
In this work we will
detect pedestrians on road using Deep Learning Techniques. Both detection and
tracking people are challenging problems, especially in complex real-world
scenes that commonly involve multiple people, complicated occlusions, and
cluttered or even moving backgrounds. People detectors have been shown to be
able to locate pedestrians even in complex street scenes, but false positives
have remained frequent.
The identification of particular individuals has
remained challenging as well. The approximate articulation of each person is
detected using YOLOv2 pretrained detector network. Dataset used here is
collected from Kaggle pedestrian’s dataset.
Keywords: Detection, Convolution Neural network, Deep Learning, YOLOV2.
NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.
Software: Matlab 2020a or above
Hardware:
Operating Systems:
Processors:
Minimum: Any Intel or AMD x86-64 processor
Recommended: Any Intel or AMD x86-64 processor with four logical cores and AVX2 instruction set support
Disk:
Minimum: 2.9 GB of HDD space for MATLAB only, 5-8 GB for a typical installation
Recommended: An SSD is recommended A full installation of all MathWorks products may take up to 29 GB of disk space
RAM:
Minimum: 4 GB
Recommended: 8 GB