Efficient 3D Instance Segmentation and Localization with Neural Fields
Centrala begrepp
3DIML efficiently learns an implicit 3D scene representation that factorizes the underlying scene into its constituent objects, enabling fast and accurate 3D-consistent instance segmentation from posed RGB images.
Sammanfattning
The paper introduces 3DIML, an efficient technique for learning 3D-consistent instance segmentation from a sequence of posed RGB images. 3DIML comprises two main components:
InstanceMap:
- Extracts view-inconsistent 2D instance masks from the RGB sequence using a frontend instance segmentation model.
- Associates the masks across frames using keypoint matches between similar pairs of images.
- Uses the potentially noisy mask associations to supervise a neural label field in the InstanceLift phase.
InstanceLift:
- Learns a neural label field that exploits 3D structure to interpolate missing labels and resolve ambiguities in the InstanceMap outputs.
- Uses a single rendering loss for instance label supervision, enabling faster training convergence compared to prior work.
Additionally, the paper introduces InstanceLoc, a fast localization pipeline that takes a novel view, localizes all instances using a fast instance segmentation model, and fuses the results with the trained label field.
Experiments on the Replica and ScanNet datasets show that 3DIML achieves comparable performance to prior state-of-the-art methods (Panoptic Lifting and Contrastive Lifting) while offering a 14-24x speedup in training time.
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Efficient 3D Instance Mapping and Localization with Neural Fields
Statistik
3DIML achieves a 14-24x speedup in training time over Panoptic Lifting and Contrastive Lifting.
On Replica-vMap, the average training time for 3DIML is 14.5 minutes, compared to 5.7 hours for Panoptic Lifting and 3.6 hours for Contrastive Lifting.
On ScanNet, 3DIML achieves mIoU scores ranging from 0.621 to 0.782 across different scenes.
Citat
"3DIML significantly improves upon training and inference runtimes of existing implicit scene representation based methods."
"Opposed to prior art that optimizes a neural field in a self-supervised manner, requiring complicated training procedures and loss function design, 3DIML leverages a two-phase process."
Djupare frågor
How could 3DIML be extended to handle more challenging scenarios, such as scenes with significant occlusions or drastic viewpoint changes
To handle more challenging scenarios like scenes with significant occlusions or drastic viewpoint changes, 3DIML could be extended in several ways. One approach could involve incorporating advanced occlusion handling techniques, such as occlusion reasoning algorithms that can infer occluded regions based on context and scene geometry. Additionally, integrating multi-view consistency constraints could help in resolving ambiguities caused by drastic viewpoint changes. By leveraging temporal information across frames, the model can better understand object relationships and appearances, even in the presence of occlusions or viewpoint variations. Furthermore, enhancing the label refinement process in InstanceLift to explicitly address occlusions and viewpoint changes could improve the model's robustness in challenging scenarios.
What other applications could benefit from the efficient 3D instance segmentation capabilities of 3DIML, beyond the robotics use case mentioned in the paper
The efficient 3D instance segmentation capabilities of 3DIML have broad applications beyond just robotics. One significant application area is autonomous driving, where accurate and real-time 3D scene understanding is crucial for safe navigation. By enabling vehicles to perceive and segment objects in their surroundings accurately, 3DIML can enhance the perception systems of autonomous vehicles, improving their decision-making processes. Another application is in augmented reality (AR) and virtual reality (VR) environments, where 3DIML can facilitate realistic object interactions and scene understanding. This can lead to more immersive and interactive AR/VR experiences by enabling precise object segmentation and localization in 3D space. Additionally, in the field of medical imaging, 3DIML can aid in the segmentation and analysis of complex anatomical structures from 3D medical scans, contributing to more accurate diagnostics and treatment planning.
How could the InstanceLoc component be further improved to enable real-time 3D-consistent instance segmentation for novel views
To further improve the InstanceLoc component for real-time 3D-consistent instance segmentation in novel views, several enhancements can be considered. One approach is to optimize the sparse querying strategy by incorporating adaptive sampling techniques that focus on regions of interest within the image. By dynamically adjusting the sampling density based on the complexity of the scene or the uncertainty in instance localization, InstanceLoc can achieve more efficient and accurate results. Additionally, integrating a feedback mechanism that refines the initial instance localization results based on contextual information from neighboring instances can enhance the overall segmentation quality. Furthermore, leveraging lightweight neural network architectures or hardware acceleration techniques can speed up the inference process, enabling faster and more responsive 3D instance segmentation for real-time applications.