Abstract In gun‐related crime investigations, analyzing fired bullets is critical. Traditional examination via comparison microscopes is labor‐intensive and time‐consuming, hindering investigation efficiency. To address these issues, this study uses a Siamese neural network (SNN) to support bullet analysis through similarity‐based candidate retrieval. A dataset of 17,870 bullets from 8935 firearms (two bullets per firearm) was built; their surface topographies were scanned into 2D images via the BalScan system, preprocessed, and split into training/testing sets. The SNN was trained on training data, and instance retrieval was used on testing data to retrieve similarity‐based candidates for unidentified bullets. Results showed the method's effectiveness: against a 600‐image gallery, top 1, top 5, and top 10 retrieval accuracies reached 80.2%, 93.4%, and 97.3%, respectively. Compared with previous studies with limited firearms and more bullets per firearm, this work expanded firearm samples and increased task complexity. The SNN‐based retrieval system can expedite the process of narrowing down potential firearm matches for bullets, supporting examiners in ballistic examinations and aiding forensic investigations.
Guo et al. (Wed,) studied this question.