PROJECT TITLE :

Vehicle Color Recognition With Spatial Pyramid Deep Learning

ABSTRACT:

Color, as a notable and stable attribute of vehicles, will serve as a useful and reliable cue in an exceedingly variety of applications in intelligent transportation systems. So, vehicle color recognition in natural scenes has become an important research topic in this area. In this paper, we have a tendency to propose a deep-learning-based mostly algorithm for automatic vehicle color recognition. Totally different from standard strategies, which sometimes adopt manually designed options, the proposed algorithm is able to adaptively learn illustration that is a lot of effective for the task of car color recognition, that results in higher recognition accuracy and avoids preprocessing. Moreover, we have a tendency to combine the widely used spatial pyramid strategy with the first convolutional neural network design, that additional boosts the recognition accuracy. To the most effective of our information, this can be the first work that employs Deep Learning in the context of vehicle color recognition. The experiments demonstrate that the proposed approach achieves superior performance over conventional strategies.


Did you like this research project?

To get this research project Guidelines, Training and Code... Click Here


PROJECT TITLE : To Predict or to Relay: Tracking Neighbors via Beaconing in Heterogeneous Vehicle Conditions ABSTRACT: Because of the widespread availability of capabilities for vehicular communications, periodic beaconing is
PROJECT TITLE : Robust H∞ Network Observer-Based Attack-Tolerant Path Tracking Control of Autonomous Ground Vehicle ABSTRACT: Under the influence of external disturbance, measurement noise, and actuator/sensor attack signals,
PROJECT TITLE : VARID Viewpoint-Aware Re-IDentification of Vehicle Based on Triplet Loss ABSTRACT: Research on vehicle re-identification, also known as "Re-ID," has garnered a significant amount of attention in recent years due
PROJECT TITLE : Model-Reference Reinforcement Learning for Collision-Free Tracking Control of Autonomous Surface Vehicles ABSTRACT: In this paper, a novel model-reference reinforcement learning algorithm for intelligent tracking
PROJECT TITLE : Learning TBox With a Cascaded Anchor-Free Network for Vehicle Detection ABSTRACT: Vehicle detection, which is the process of identifying vehicles as axis-aligned bounding boxes in still images, is utilized quite

Ready to Complete Your Academic MTech Project Work In Affordable Price ?

Project Enquiry