SceneDiff: A Benchmark and Method for Multiview Object Change Detection
By: Yuqun Wu , Chih-hao Lin , Henry Che and more
Potential Business Impact:
Finds what changed in pictures from different views.
We investigate the problem of identifying objects that have been added, removed, or moved between a pair of captures (images or videos) of the same scene at different times. Detecting such changes is important for many applications, such as robotic tidying or construction progress and safety monitoring. A major challenge is that varying viewpoints can cause objects to falsely appear changed. We introduce SceneDiff Benchmark, the first multiview change detection benchmark with object instance annotations, comprising 350 diverse video pairs with thousands of changed objects. We also introduce the SceneDiff method, a new training-free approach for multiview object change detection that leverages pretrained 3D, segmentation, and image encoding models to robustly predict across multiple benchmarks. Our method aligns the captures in 3D, extracts object regions, and compares spatial and semantic region features to detect changes. Experiments on multi-view and two-view benchmarks demonstrate that our method outperforms existing approaches by large margins (94% and 37.4% relative AP improvements). The benchmark and code will be publicly released.
Similar Papers
Charge: A Comprehensive Novel View Synthesis Benchmark and Dataset to Bind Them All
CV and Pattern Recognition
Creates realistic 3D movie scenes from different viewpoints.
SceneEdited: A City-Scale Benchmark for 3D HD Map Updating via Image-Guided Change Detection
CV and Pattern Recognition
Updates 3D maps automatically with new city details.
Multi-View 3D Point Tracking
CV and Pattern Recognition
Tracks moving things in 3D with few cameras.