GARF: Gaussian Activated Radiance Fields for High Fidelity Reconstruction and Pose Estimation
Abstract
Gaussian Activated neural Radiance Fields (GARF) improve photorealistic view synthesis and pose estimation without using auxiliary positional embeddings, outperforming existing methods.
Despite Neural Radiance Fields (NeRF) showing compelling results in photorealistic novel views synthesis of real-world scenes, most existing approaches require accurate prior camera poses. Although approaches for jointly recovering the radiance field and camera pose exist (BARF), they rely on a cumbersome coarse-to-fine auxiliary positional embedding to ensure good performance. We present Gaussian Activated neural Radiance Fields (GARF), a new positional embedding-free neural radiance field architecture - employing Gaussian activations - that outperforms the current state-of-the-art in terms of high fidelity reconstruction and pose estimation.
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