Finding and localizing the conceptual changes in two scenes in terms of the presence or removal of objects in two images belonging to the same scene at different times in special care applications is of great significance. This is mainly due to the fact that addition or removal of important objects for some environments can be harmful. As a result, there is a need to design a program that locates these differences using machine vision. The most important challenge of this problem is the change in lighting conditions and the presence of shadows in the scene. Therefore, the proposed methods must be resistant to these challenges. In this article, a method based on deep convolutional neural networks using transfer learning is introduced, which is trained with an intelligent data synthesis process. The results of this method are tested and presented on the dataset provided for this purpose. It is shown that the presented method is more efficient than other methods and can be used in a variety of real industrial environments.
翻译:在两个场景中查找和定位在两个场景中概念变化的概念变化,在特殊护理应用中,不同时间属于同一场景的两个图像中的物体的存在或移走,具有重大意义,这主要是因为某些环境的重要物体的增加或移走可能有害,因此,需要设计一个程序,利用机器的视觉定位这些差异,这一问题最重要的挑战是照明条件的变化和场景中的阴影存在。因此,拟议方法必须能够抵御这些挑战。在文章中,采用了一种基于深层神经神经网络的方法,使用转移学习,并经过智能数据合成过程的培训。这一方法的结果经过测试,并在为此目的提供的数据集中展示。显示,所提出的方法比其他方法更有效,可以用于各种真正的工业环境。