Due to the enormous population growth of cities in recent years, objects are frequently lost and unclaimed on public transportation, in restaurants, or any other public areas. While services like Find My iPhone can easily identify lost electronic devices, more valuable objects cannot be tracked in an intelligent manner, making it impossible for administrators to reclaim a large number of lost and found items in a timely manner. We present a method that significantly reduces the complexity of searching by comparing previous images of lost and recovered things provided by the owner with photos taken when registered lost and found items are received. In this research, we will primarily design a photo matching network by combining the fine-tuning method of MobileNetv2 with CBAM Attention and using the Internet framework to develop an online lost and found image identification system. Our implementation gets a testing accuracy of 96.8% using only 665.12M GLFOPs and 3.5M training parameters. It can recognize practice images and can be run on a regular laptop.
翻译:由于近年来城市人口的巨大增长,在公共交通、餐馆或任何其他公共领域,物品经常丢失,无人认领。虽然“发现我的iPhone”等服务很容易识别丢失的电子设备,但无法以智能方式追踪更有价值的物品,使管理员无法及时收回大量丢失和发现物品。我们提出了一个方法,通过比较业主先前提供的丢失和收回物品的图像和在登记失物和发现物品时收到的照片,大大降低了搜索的复杂性。在这项研究中,我们将主要设计一个照片匹配网络,将移动网络2的微调方法与CBAM 注意力结合起来,并利用因特网框架开发一个在线丢失和发现图像识别系统。我们的实施只能使用665.12M GLFOPs和3.5M培训参数,测试精确度达到96.8%。它能够识别练习图像,并可以用普通的笔记本电脑运行。