Multi-Scale Indoor Scene Geometry Modeling Algorithm Based on Segmentation Results
Round 1
Reviewer 1 Report
The authors proposed a new algorithm for modeling regular geometric objects in interiors based on point cloud data. The algorithm is more accurate, efficient, and robust to occlusion and stacking than previous methods. The algorithm is designed for regular geometric objects. For objects with irregular shapes or combinations of different geometric elements, it may not be accurate enough. In the case of low-quality data, it may be difficult to correctly segment the point cloud into individual objects or classify each object as planar or curved. Contribution is clearly described. I recommend editing the conclusion to better reflect the article.
Author Response
- We pointed out in the conclusion that the action scenario is a regular geometric object, and the performance of the algorithm may be affected in cases where low-quality data hinders accurate point cloud segmentation or the correct classification of objects as planes or surfaces.
Reviewer 2 Report
In this work titled Multi-scale Indoor Scene Geometry Modeling Algorithm Based on Segmentation Results, the authors dealt with Object Segmentation; Face Recognition; Oriented Bounding Box; Geometric Modeling,.
The topics are presented into introduction, Related Work, Methods, Experiments , Conclusions, and the authors mention only 23 references
The authors proposed geometric modeling algorithm based on known segmentation results.
According to the authors “Experiments were performed on synthetic datasets, public data sets, and self-collected datasets, and the experimental results showed a small error in geometric body size estimation, verifying the effectiveness and robustness of the algorithm proposed in this submitted paper “
The authors mention only few references: I suggest improving the state of the art
Author Response
- We have updated some references to the latest years and also added some references
Reviewer 3 Report
This manuscript provides a Geometry Modeling Algorithm using multiscale segmentation for indoor scenes.
Furthermore, it presents the results regarding the search neighborhood, Feature Calculation Based on Covariance Matrix, Recognition and modeling of regular geometric shapes,.
Major Comments
1. A quantitative comparison with other studies is not available.
2. The authors mentioned the error details in Figure 9, which are the demerits of the proposed system for not reaching zero error.
3. The procedures are not clearly mentioned when switching from 3.1. Determining the type of planar or curved surface to 3.2 Recognition and modeling of regular geometric shape as shown in Figure 1. To achieve the experimental results of the mixed object scene, as shown in figure 8.
Minor
1. Conclusion: Section 5 is required to improve.
2. Kindly highlight your novelties.
Author Response
Round 2
Reviewer 2 Report
I checked the new version of thev submitrec paper the authors adequately provided the questions formulated by me
The paper is acceptable as is in its update format
Reviewer 3 Report
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