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3D Deep Learning with Python

You're reading from  3D Deep Learning with Python

Product type Book
Published in Oct 2022
Publisher Packt
ISBN-13 9781803247823
Pages 236 pages
Edition 1st Edition
Languages
Authors (3):
Xudong Ma Xudong Ma
Profile icon Xudong Ma
Vishakh Hegde Vishakh Hegde
Profile icon Vishakh Hegde
Lilit Yolyan Lilit Yolyan
Profile icon Lilit Yolyan
View More author details

Table of Contents (16) Chapters

Preface 1. PART 1: 3D Data Processing Basics
2. Chapter 1: Introducing 3D Data Processing 3. Chapter 2: Introducing 3D Computer Vision and Geometry 4. PART 2: 3D Deep Learning Using PyTorch3D
5. Chapter 3: Fitting Deformable Mesh Models to Raw Point Clouds 6. Chapter 4: Learning Object Pose Detection and Tracking by Differentiable Rendering 7. Chapter 5: Understanding Differentiable Volumetric Rendering 8. Chapter 6: Exploring Neural Radiance Fields (NeRF) 9. PART 3: State-of-the-art 3D Deep Learning Using PyTorch3D
10. Chapter 7: Exploring Controllable Neural Feature Fields 11. Chapter 8: Modeling the Human Body in 3D 12. Chapter 9: Performing End-to-End View Synthesis with SynSin 13. Chapter 10: Mesh R-CNN 14. Index 15. Other Books You May Enjoy

Mapping feature fields to images

After we generate a feature field of dimensions HV x WV x Mf, we need to map this to an image of dimension H x W x 3. Typically, HV < H, WV < W, and Mf > 3. The GIRAFFE model uses the two-stage approach since an ablation analysis showed it to be better than using a single-stage approach to generate the image directly.

The mapping operation is a parametric function that can be learned with data, and using a 2D CNN is best suited for this task since it is a function in the image domain. You can think of this function as an upsampling neural network like a decoder in an auto-encoder. The output of this neural network is the rendered image that we can see, understand, and evaluate. Mathematically, this can be defined as follows:

This neural network consists of a series of upsampling layers done using n blocks of nearest neighbor upsampling, followed by a 3 x 3 convolution and leaky ReLU. This creates a series of n...

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