The technology uses cameras, software, and databases to capture and process license plate images in various lighting conditions. The data is compared against databases of stolen vehicles and wanted persons.
But, it’s not without its problems. One case involved a woman being handcuffed and searched by police due to an ALPR error.
Training Models
To be effective, license plate recognition (LPR) systems like gtechna must first recognize and decipher the alphanumeric characters on a vehicle’s number plate. To achieve this, models are trained on vast datasets that include various types of cars and containers with varying fonts, even in challenging scenarios like poor lighting or partial occlusion.
Once trained, a model can process images or video frames in real-time and zero in on the vehicle’s license plate. Using OCR technology, the system detects and extracts each character on a license plate and then translates them into readable text. The system can also perform template matching, which compares an image of a license plate with a database to identify the plate’s unique characteristics.
A variety of machine learning techniques are used to train ANPR models. For example, more advanced ANPR systems employ recurrent neural networks (RNNs) and extended short-term memory networks to pre-process and clean image data before OCRing. Some ANPR systems use dedicated object detection architectures to localize license plate images, resulting in higher accuracy rates than traditional OCR methods.
Critics have raised privacy concerns related to ANPR. Still, they can be addressed through robust data protection measures, clear regulations governing data usage, and transparent protocols regarding collecting and storing ALPR data. In addition, encrypting stored and transmitted data makes it significantly more difficult for malicious actors to intercept or decipher this sensitive information.
Integration
LPR systems utilize image processing algorithms to identify license plates. The resulting data is compared against databases for identification purposes. These databases can contain information such as vehicle owner records, registration status, and alerts for stolen vehicles or vehicles associated with criminal activities.
Several different image processing algorithms are used in the process, including plate localization (which separates the license plate from other objects in the frame), normalization, and character segmentation. These algorithms are often trained on large datasets that allow the models to learn about the complexities of license plate recognition. These technologies are essential for ensuring that the system can accurately recognize plates, even in challenging scenarios such as reflected light or partial occlusion.
When a matched alert is detected, the system notifies an officer in the squad car or at the agency (if it is a fixed reader). Some agencies have hotlists of vehicles they are actively looking for, such as those involved in ongoing investigations. Others have hotlists of cars owed parking tickets or other violations, which allows them to generate revenue by stopping these scofflaws.
While there are legitimate privacy concerns about using LPR, these can be addressed through robust data protection measures, clear regulations on how the technology is used, and transparent practices regarding the collection, storage, and usage of the resulting data. By storing detailed and indiscriminate data on millions, ANPR can paint a surprisingly specific portrait of their lives – and sometimes even predict future movements.
Accuracy
As one of the critical pillars of the system, ALPR systems are known for their remarkable accuracy levels. They achieve this by leveraging deep learning techniques that learn to recognize complex patterns and nuances in license plate images with extraordinary speed and precision. These models also employ sophisticated image processing algorithms to compensate for challenging lighting conditions and obstructions.
Additionally, vendors boast that their ALPR solutions can capture detailed information like the make and model of a vehicle along with its exact date and time of registration and location. This data is fed into an internal database and analyzed using advanced analytics. According to them, law enforcement can use this information to track vehicles involved in criminal activity and locate missing persons.
Privacy concerns can be mitigated by implementing robust data protection measures such as encryption, which prevents unauthorized access to sensitive information. Additionally, policies must clearly outline how the collected data will be used and under what circumstances it will be shared with external entities.
Furthermore, the scanning process should be adapted to allow officers to run a plate for only its registration information and whether it is on a hot list. This way, they can avoid revealing protected personal data during the first inquiry, which is known to trigger various privacy concerns, such as racial profiling and unnecessarily stopping innocent people.