CVJan 11, 2024

Efficient Deformable ConvNets: Rethinking Dynamic and Sparse Operator for Vision Applications

arXiv:2401.06197v1190 citationsh-index: 63CVPR
Originality Incremental advance
AI Analysis

This work addresses speed and convergence issues in vision models for researchers and practitioners, though it is incremental as it builds directly on DCNv3.

The paper tackled the inefficiency of deformable convolution operators by introducing DCNv4, which enhances dynamic properties and optimizes memory access, resulting in over three times faster forward speed and up to 80% speed increase in models like FlashInternImage.

We introduce Deformable Convolution v4 (DCNv4), a highly efficient and effective operator designed for a broad spectrum of vision applications. DCNv4 addresses the limitations of its predecessor, DCNv3, with two key enhancements: 1. removing softmax normalization in spatial aggregation to enhance its dynamic property and expressive power and 2. optimizing memory access to minimize redundant operations for speedup. These improvements result in a significantly faster convergence compared to DCNv3 and a substantial increase in processing speed, with DCNv4 achieving more than three times the forward speed. DCNv4 demonstrates exceptional performance across various tasks, including image classification, instance and semantic segmentation, and notably, image generation. When integrated into generative models like U-Net in the latent diffusion model, DCNv4 outperforms its baseline, underscoring its possibility to enhance generative models. In practical applications, replacing DCNv3 with DCNv4 in the InternImage model to create FlashInternImage results in up to 80% speed increase and further performance improvement without further modifications. The advancements in speed and efficiency of DCNv4, combined with its robust performance across diverse vision tasks, show its potential as a foundational building block for future vision models.

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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