Benchmark for License Plate Character Segmentation
Gabriel Resende Gon\c{c}alves, Sirlene Pio Gomes da Silva, David, Menotti, William Robson Schwartz

TL;DR
This paper introduces a new benchmark dataset and evaluation metric for license plate character segmentation in uncontrolled environments, along with a simple segmentation approach and experimental analysis.
Contribution
It provides a specialized dataset, a novel evaluation measure, and an effective segmentation method for improving license plate recognition accuracy.
Findings
The Jaccard-Centroid coefficient better assesses bounding box localization.
Character segmentation significantly impacts OCR accuracy.
The proposed approach performs competitively on the new dataset.
Abstract
Automatic License Plate Recognition (ALPR) has been the focus of many researches in the past years. In general, ALPR is divided into the following problems: detection of on-track vehicles, license plates detection, segmention of license plate characters and optical character recognition (OCR). Even though commercial solutions are available for controlled acquisition conditions, e.g., the entrance of a parking lot, ALPR is still an open problem when dealing with data acquired from uncontrolled environments, such as roads and highways when relying only on imaging sensors. Due to the multiple orientations and scales of the license plates captured by the camera, a very challenging task of the ALPR is the License Plate Character Segmentation (LPCS) step, which effectiveness is required to be (near) optimal to achieve a high recognition rate by the OCR. To tackle the LPCS problem, this work…
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