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Improving Bird's Eye View Semantic Segmentation by Decomposing the Task into Generation and Perception


Kernekoncepter
A two-stage method is proposed to decompose the traditional end-to-end bird's eye view semantic segmentation task into a BEV autoencoder for generation and an RGB-BEV alignment module for perception, which simplifies the complexity and improves the performance.
Resumé

The paper proposes a two-stage method called Task Decomposition (TaDe) to address the challenge of monocular bird's eye view (BEV) semantic segmentation.

In the first stage, a BEV autoencoder is trained to reconstruct BEV segmentation maps from corrupted latent representations. This forces the decoder to learn fundamental patterns of typical BEV scenes, ensuring the generation of coherent and rational BEV maps.

In the second stage, an RGB-BEV alignment module is trained to map the input RGB images into the BEV latent space learned in the first stage. This allows the pre-trained BEV decoder to be directly used for BEV segmentation map prediction during inference, without the need for depth estimation or multi-scale features.

Additionally, the authors propose to transform the BEV segmentation maps from Cartesian to polar coordinates to establish better column-wise correspondence between the RGB images and BEV maps. This helps the alignment module learn the transition between the two views more effectively.

Extensive experiments on the nuScenes and Argoverse datasets demonstrate the superiority of the proposed TaDe method over previous end-to-end approaches, in terms of both accuracy and computational efficiency.

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Statistik
The paper reports the following key statistics: The proposed method achieves a mean IoU of 29.2% on the nuScenes dataset, outperforming the previous state-of-the-art method GitNet by 1.3%. On the Argoverse dataset, the method achieves a mean IoU of 22.3%, surpassing the previous best method PON by 5.3%. Compared to other methods, the proposed TaDe method has significantly lower computational overhead, with 41.5M parameters, 48.5G FLOPs, and 51.4 FPS.
Citater
"To achieve the complex cross-view BEV segmentation, we propose a Task Decomposition (TaDe) method that decompose the traditional end-to-end pipeline into two distinct but goal-oriented stages." "To incorporate this prior knowledge, we employ an autoencoder to learn how to reconstruct/generate the target BEV segmentation maps." "Different from existing works, the optimization is in the autoencoder latent space, rather than the traditional pixel segmentation classification space."

Vigtigste indsigter udtrukket fra

by Tianhao Zhao... kl. arxiv.org 04-03-2024

https://arxiv.org/pdf/2404.01925.pdf
Improving Bird's Eye View Semantic Segmentation by Task Decomposition

Dybere Forespørgsler

How can the proposed two-stage approach be extended to handle other cross-view perception tasks beyond BEV segmentation, such as object detection or instance segmentation?

The proposed two-stage approach can be extended to handle other cross-view perception tasks by adapting the methodology to suit the specific requirements of tasks like object detection or instance segmentation. For object detection, the first stage could involve training an encoder-decoder network to learn the fundamental features of objects in different views. The second stage could focus on aligning these features across views and fine-tuning the decoder for accurate object detection. Similarly, for instance segmentation, the first stage could be modified to learn instance-specific features, and the second stage could align these features and refine the segmentation output.

What are the potential limitations of the coordinate transformation approach, and how could it be further improved to handle more complex real-world scenarios?

One potential limitation of the coordinate transformation approach is the assumption of a simplified transformation between Cartesian and polar coordinates, which may not fully capture the complexities of real-world scenarios. To improve this approach, advanced geometric transformations could be explored to handle more complex scenarios with varying camera perspectives and scene layouts. Additionally, incorporating adaptive transformations based on scene context or object characteristics could enhance the accuracy of the alignment between different views.

Given the focus on monocular input, how could the method be adapted to leverage multi-view or multi-sensor data to further enhance the BEV perception performance?

To adapt the method for multi-view or multi-sensor data, the first stage could be modified to incorporate features from multiple views or sensors. This could involve designing a more robust encoder to extract features from diverse sources and fuse them effectively. The second stage could then align these multi-view features and refine the output based on the combined information. Additionally, incorporating attention mechanisms or fusion strategies tailored for multi-view data could further enhance the BEV perception performance by leveraging the complementary information from different sources.
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