核心概念
The author introduces IDTrust, a deep-learning framework that enhances the quality of identification documents by utilizing bandpass filtering. The approach eliminates the need for original document patterns and pre-processing steps, offering significant improvements in dataset applicability.
摘要
IDTrust is a deep-learning framework introduced to assess the quality of identification documents by using bandpass filtering. The system aims to effectively detect and differentiate ID quality without relying on original document patterns or pre-processing steps. By enhancing discrimination performance, IDTrust offers significant improvements in identifying differences between original and scanned ID documents. The paper discusses the methodology, experiments conducted on datasets like MIDV-2020 and L3i-ID, model configurations, and overall evaluation results showcasing the effectiveness of DeepQD and GuidedDeepQD models in distinguishing between original and scanned IDs.
統計資料
"MIDV-2020 includes 1000 video clips, 2000 scanned images, and 1000 photos of 1000 unique dummy IDs."
"L3i-ID consists of 17 types of original French IDs, comprising 5 identity cards in the old format, 2 identity cards in the new format, 6 passports, and 4 driving licenses."
"The batch size is set to 8, and the number of epochs is 100."
引述
"GuidedDeepQD consistently outperforms DeepQD on the L3i-ID dataset."
"Both models excel in identifying passport features with scores consistently above 0.96."
"Overall, GuidedDeepQD demonstrates more consistent and superior performance."