Litcius/Paper detail

Automatic Traffic Sign Board Detection from Camera Images Using Deep learning and Binarization Search Algorithm

A. Ashwini, K. E Purushothaman, Banu Priya Prathaban, M Jenath, R. Prasanna

202315 citationsDOI

Abstract

A street scene in a city can be split into several different objects. The primary focus of this paper is on developing an autonomous recognition system for detecting and recognising traffic sign elements in use, with a variety of options for setting parameters and constraints. The algorithms and methods used by the system are effective for identifying elements of traffic signs inside camera-generated images. Bitmap image algorithms and geometrical element techniques are merged in the recognition process in order to increase recognition success and make the operation more time-effective and efficient. The first step is to remove the previously specified image from the camera using deep learning based edge detection. The following stage is standardization, which is frequently carried out via a binarization image search that scans the image for continuous portions. Periodic symptomatic evaluation, the main criterion for decision-making for the action recognition system, is done in these areas. In order to accurately identify some of the discovered relationships, they are then connected with predefined items. Due to the scanning and processing of cameras in the control and safety car applications, a sophisticated autonomous system structure is created for real-time application. With a driving aid, the proposed technology reduces the possibility of human error. The suggested approach improves overall performance favourably and segments even small objects significantly better.

Topics & Concepts

Computer scienceArtificial intelligenceComputer visionTraffic sign recognitionTraffic signFocus (optics)BitmapProcess (computing)Image processingDeep learningImage (mathematics)Sign (mathematics)Operating systemMathematicsOpticsPhysicsMathematical analysisAdvanced Neural Network ApplicationsVehicle License Plate RecognitionVideo Surveillance and Tracking Methods