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authoradamhrv <adam@ahprojects.com>2019-02-28 18:50:19 +0100
committeradamhrv <adam@ahprojects.com>2019-02-28 18:50:19 +0100
commit9e3bb35630349847bc005389c408f3072e0e22db (patch)
tree642b66baae7aa27767b646a32f0c3e27bf4a615b /site/content/pages/research
parentfba426be6996da1bed87bf2a8be733af7a73a66c (diff)
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--- a/site/content/pages/research/01_from_1_to_100_pixels/index.md
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@@ -3,7 +3,7 @@
status: published
title: From 1 to 100 Pixels
desc: High resolution insights from low resolution imagery
-tagline: Photographs are for romantics. For the rest of us, it's all about data. And a photo contains a massive amount of information about who you are.
+tagline: A breif description of this post, appears in the index page overview
image: assets/intro.jpg
slug: from-1-to-100-pixels
published: 2018-12-04
@@ -21,23 +21,30 @@ This post will be about the meaning of "face". How do people define it? How to b
What can you know from a very small amount of information?
- 1 pixel grayscale
-- 2x2 pixels grayscale, font example
-- 4x4 pixels
-- 8x8 yotta yotta
-- 5x7 face recognition
+- 2x2 pixels grayscale, font example, can encode letters
+- 3x3 pixels: can create a font
+- 4x4 pixels: how many variations
+- 8x8 yotta yotta, many more variations
+- 5x7 face recognition
- 12x16 activity recognition
- 6/5 (up to 124/106) pixels in height/width, and the average is 24/20 for QMUL SurvFace
+- (prepare a Progan render of the QMUL dataset and TinyFaces)
- 20x16 tiny faces paper
- 20x20 MNIST handwritten images <http://yann.lecun.com/exdb/mnist/>
- 24x24 haarcascade detector idealized images
- 32x32 CIFAR image dataset
- 40x40 can do emotion detection, face recognition at scale, 3d modeling of the face. include datasets with faces at this resolution including pedestrian.
+- NIST standards begin to appear from 40x40, distinguish occular pixels
- need more material from 60-100
- 60x60 show how texture emerges and pupils, eye color, higher resolution of features and compare to lower resolution faces
+- 100x100 all you need for medical diagnosis
- 100x100 0.5% of one Instagram photo
+Ideas:
-Find specific cases of facial resolution being used in legal cases, forensic investigations, or military footage
+- Find specific cases of facial resolution being used in legal cases, forensic investigations, or military footage
+- resolution of boston bomber face
+- resolution of the state of the union image
### Research