Table 13.
Literature Analysis: 3D Voxel Grid-based 3D Object Recognition Methods.
SegV Net [63] | SECONDX [64] | LidarMTL [65] | |
---|---|---|---|
Detector Category | One-stage | Two-stage | Two-stage |
Environment | Outdoor | Outdoor | Outdoor |
Projection | BEV | FV | BEV |
Scenario | Ambiguous vehicles identification scenario from point cloud | Multi class 3D object detection scenario with a single model | Dynamic object detection and static road understanding scenario |
Advantage(s) | Encodes the semantic context information in the feature maps to distinguish ambiguous vehicle for better detection | Provides multiple class support in a single model. | Performs robust 3D object recognition in complicated environment Also useful for online localization |
Limitation(s) | Partial occlusion leads to false positives | Performance is not satisfactory for all the classes (e.g., cyclist and pedestrian. | The necessity of using loss weights with grid search |