CVAIDec 11, 2023

MaskConver: Revisiting Pure Convolution Model for Panoptic Segmentation

arXiv:2312.06052v110 citationsh-index: 9WACV
Originality Highly original
AI Analysis

This work addresses the problem of efficient and accurate panoptic segmentation for computer vision applications, offering a competitive alternative to transformer-based models with real-time mobile performance.

The paper tackles panoptic segmentation by revisiting pure convolution models, proposing MaskConver, which unifies representation through center prediction and uses a ConvNeXt-UNet decoder, achieving 53.6% PQ on COCO and outperforming transformer-based models like Mask2Former by 1.7% PQ.

In recent years, transformer-based models have dominated panoptic segmentation, thanks to their strong modeling capabilities and their unified representation for both semantic and instance classes as global binary masks. In this paper, we revisit pure convolution model and propose a novel panoptic architecture named MaskConver. MaskConver proposes to fully unify things and stuff representation by predicting their centers. To that extent, it creates a lightweight class embedding module that can break the ties when multiple centers co-exist in the same location. Furthermore, our study shows that the decoder design is critical in ensuring that the model has sufficient context for accurate detection and segmentation. We introduce a powerful ConvNeXt-UNet decoder that closes the performance gap between convolution- and transformerbased models. With ResNet50 backbone, our MaskConver achieves 53.6% PQ on the COCO panoptic val set, outperforming the modern convolution-based model, Panoptic FCN, by 9.3% as well as transformer-based models such as Mask2Former (+1.7% PQ) and kMaX-DeepLab (+0.6% PQ). Additionally, MaskConver with a MobileNet backbone reaches 37.2% PQ, improving over Panoptic-DeepLab by +6.4% under the same FLOPs/latency constraints. A further optimized version of MaskConver achieves 29.7% PQ, while running in real-time on mobile devices. The code and model weights will be publicly available

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