Ground Terrain Recognition is a difficult task as the context information varies significantly over the regions of a ground terrain image. In this paper, we propose a novel approach towards ground-terrain recognition via modeling the Extent-of-Texture information to establish a balance between the order-less texture component and ordered-spatial information locally. At first, the proposed method uses a CNN backbone feature extractor network to capture meaningful information of a ground terrain image, and model the extent of texture and shape information locally. Then, the order-less texture information and ordered shape information are encoded in a patch-wise manner, which is utilized by intra-domain message passing module to make every patch aware of each other for rich feature learning. Next, the Extent-of-Texture (EoT) Guided Inter-domain Message Passing module combines the extent of texture and shape information with the encoded texture and shape information in a patch-wise fashion for sharing knowledge to balance out the order-less texture information with ordered shape information. Further, Bilinear model generates a pairwise correlation between the order-less texture information and ordered shape information. Finally, the ground-terrain image classification is performed by a fully connected layer. The experimental results indicate superior performance of the proposed model over existing state-of-the-art techniques on publicly available datasets like DTD, MINC and GTOS-mobile.
翻译:地面地面识别是一项艰巨的任务,因为地面地形图象的区域背景信息差异很大。 在本文中,我们提出一种新颖的地面地面识别方法,通过模拟外观程度信息,在无序纹理部分和当地订购的空间信息之间建立平衡。首先,拟议方法使用CNN主干特征提取器网络收集地面地形图象的有意义的信息,并模拟当地纹理和形状信息的范围。然后,无序纹理信息和定序形状信息以非对称方式编码,由内部信息传递模块使用,使每个补丁都了解对方的丰富地貌学习。接下来,无序纹理程度(EoToT)指导跨部信息传递模块将纹理和成型信息的范围与编码成型文本图像的广度结合起来,并将信息与本地图像信息相平衡。此外,双线型模型在无序纹理文本传递模块之间产生双对等的关联性关系,用于丰富地学习功能学习。最后,通过Sloveyal Treal Text 和定型图像的完整地层显示现有的地面数据。