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Posts by Esther Lin

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We’ll be releasing the first dataset of 5D & 6D lens blur fields for smartphone & SLR lenses—stay tuned!

7 months ago 10 0 0 0
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And with more realistic renders, we can also do better device-specific image restoration.

7 months ago 14 1 1 0
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Lens Blur Fields let you render device-specific depth-of-field, blur a resolution chart, or a 3D scene:

7 months ago 9 0 1 0
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Two smartphones of the same make can have subtly different PSFs—your phone has its own blur signature 📱🔍

We show this with the lens blur fields of two iPhone 12 Pros:

7 months ago 13 0 1 0
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Our capture setup only needs a monitor + a simple phone/camera stand. The pipeline is light ✨

1️⃣ Capture a focal stack of monitor patterns (in minutes)
2️⃣ Train an MLP via non-blind deconvolution
3️⃣ Get a continuous, device-specific PSF model

7 months ago 12 0 1 0
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Optical blur (PSF) is a laundry list of degrading effects, e.g. defocus, diffraction, and aberrations.


It’s hard to calibrate as it varies with sensor position, focus, target distance & image plane location.


We introduce Lens Blur Fields—tiny MLPs that can model this high-dimensional PSF.

7 months ago 19 1 1 0
Learning Lens Blur Fields The lens blur field is a neural representation for modelling optical blur.

Huge thanks to my amazing co-authors:
Zhecheng Wang, Rebecca Lin, Daniel Miau, Florian Kainz, Jiawen Chen, Xuaner (Cecilia) Zhang, David B. Lindell & Kiriakos N. Kutulakos

📄 Paper ➡️ blur-fields.github.io
💻 Code: coming soon!

#ComputationalPhotography #IEEECS #ComputerVision #Optics

7 months ago 18 0 1 0
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Every lens leaves a blur signature—a hidden fingerprint in every photo.

In our new #TPAMI paper, we show how to learn it fast (5 mins of capture!) with Lens Blur Fields ✨

With it, we can tell apart ‘identical’ phones by their optics, deblur images, and render realistic blurs.

7 months ago 154 49 3 9