Mobile, self-adjusting, video-based vehicle detection system for traffic applications
The main outcome of the project was the development of a compact and portable camera for automatic vehicle detection and identification – NeuroCar ANPRCam, with built-in image processing (so-called edge computing). The functionality of the device is aligned with the wishes of potential clients, identified based on surveys conducted in the first phase of the project:
In line with these assumptions, two variants of the device were prepared – for measurements on one or two traffic lanes. Functional and quality tests confirmed that the device achieves a very high detection rate (>99%), identification rate (>97%), and vehicle classification rate (90%) under the specified boundary conditions provided in the product documentation.
The first significant, intermediate result of the project was the development of several new functional modules (calibration, adaptation, image quality assessment, service monitoring, fault detection) and the further development of existing core modules (detection, classification, data integration, anonymization) of visual detectors. Currently, all operate based on the latest technologies and optimized computational algorithms. The modules have been implemented in all devices of the NeuroCar product line as the so-called firmware “NeuroCar Terminal Vehicle Identification”, determining the innovative advantage and competitiveness of the product line.
The second significant, intermediate result of the project was the development of supervisory software – “NeuroCar BackOffice”, operating in the cloud (using REST Api/Docker/Kubernetes), allowing real-time monitoring of camera operation, collection of measurement and diagnostic data, and analysis of this data using various analytical modules. The commercialization of the new product and technologies involved:
The project was carried out in collaboration with the following entities: