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. 2021 Oct 27;21(21):7120. doi: 10.3390/s21217120

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