Differential Viewpoints for Ground Terrain Material Recognition

09/22/2020
by   Jia Xue, et al.
6

Computational surface modeling that underlies material recognition has transitioned from reflectance modeling using in-lab controlled radiometric measurements to image-based representations based on internet-mined single-view images captured in the scene. We take a middle-ground approach for material recognition that takes advantage of both rich radiometric cues and flexible image capture. A key concept is differential angular imaging, where small angular variations in image capture enables angular-gradient features for an enhanced appearance representation that improves recognition. We build a large-scale material database, Ground Terrain in Outdoor Scenes (GTOS) database, to support ground terrain recognition for applications such as autonomous driving and robot navigation. The database consists of over 30,000 images covering 40 classes of outdoor ground terrain under varying weather and lighting conditions. We develop a novel approach for material recognition called texture-encoded angular network (TEAN) that combines deep encoding pooling of RGB information and differential angular images for angular-gradient features to fully leverage this large dataset. With this novel network architecture, we extract characteristics of materials encoded in the angular and spatial gradients of their appearance. Our results show that TEAN achieves recognition performance that surpasses single view performance and standard (non-differential/large-angle sampling) multiview performance.

READ FULL TEXT

page 1

page 2

page 3

page 4

page 6

page 9

page 11

page 14

research
12/07/2016

Differential Angular Imaging for Material Recognition

Material recognition for real-world outdoor surfaces has become increasi...
research
09/22/2020

Angular Luminance for Material Segmentation

Moving cameras provide multiple intensity measurements per pixel, yet of...
research
03/29/2018

Deep Texture Manifold for Ground Terrain Recognition

We present a texture network called Deep Encoding Pooling Network (DEP) ...
research
10/23/2018

Single-Image SVBRDF Capture with a Rendering-Aware Deep Network

Texture, highlights, and shading are some of many visual cues that allow...
research
02/07/2015

Reflectance Hashing for Material Recognition

We introduce a novel method for using reflectance to identify materials....
research
09/24/2021

Ground material classification and for UAV-based photogrammetric 3D data A 2D-3D Hybrid Approach

In recent years, photogrammetry has been widely used in many areas to cr...
research
03/25/2016

Friction from Reflectance: Deep Reflectance Codes for Predicting Physical Surface Properties from One-Shot In-Field Reflectance

Images are the standard input for vision algorithms, but one-shot infiel...

Please sign up or login with your details

Forgot password? Click here to reset