Lost item identification model development using similarity prediction method with CNN ResNet algorithm

Jonathan Prawira, Theresia Ratih Dewi Saputri
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Abstract

Background: Incidents of personal belongings being lost often occur due to our negligence as human beings or criminal acts such as theft. The methods used to address such situations are still manual and ineffective. The manual process of reporting lost items requires significant time and effort. Additionally, matching the information of lost items with the found ones becomes increasingly difficult, and finding the original owners can be time-consuming. Objectives and Methods: This research aims to develop an approach that aids the community in the management of lost items by incorporating a process of item identification. It proposes the creation of an iOS-based prototype model that implements image comparison and string matching. The ResNet-50 architecture extracts features from images, and the Euclidean Distance method measures similarity between these features. Natural language processing used for text pre-processing and employs the cosine similarity metric to assess textual similarity in item descriptions. Result and Conclusion: By combining Euclidean distance and cosine similarity values, the model predicts similar lost item reports. Image comparison provides an accuracy result of 29.96% correctness, while string matching with 97.92% correctness. Thorough testing and validation confirm the model’s success across different reports.
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利用 CNN ResNet 算法的相似性预测方法开发丢失物品识别模型
背景:个人财物丢失事件的发生往往是由于我们人类的疏忽或盗窃等犯罪行为造成的。目前用于处理此类情况的方法仍然是手工操作,效果不佳。人工报告遗失物品的过程需要花费大量的时间和精力。此外,将遗失物品的信息与拾到物品的信息进行比对也变得越来越困难,而且寻找原失主也非常耗时。目标和方法:本研究旨在开发一种方法,通过整合物品识别流程,协助社区管理遗失物品。它建议创建一个基于 iOS 的原型模型,实现图像对比和字符串匹配。ResNet-50 架构可从图像中提取特征,而欧氏距离法可测量这些特征之间的相似性。自然语言处理用于文本预处理,并采用余弦相似度量来评估物品描述中的文本相似性。结果和结论:通过结合欧氏距离和余弦相似度值,该模型可预测相似的遗失物品报告。图像对比的正确率为 29.96%,字符串匹配的正确率为 97.92%。彻底的测试和验证证实了该模型在不同报告中的成功。
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