Blog

Sep 30, 2025

Why Neural Fields Beat Grid-Based Methods for Spatiotemporal Imaging

It is difficult to reconstruct dynamic images from undersampled data because motion is ignored, producing wildly inaccurate results. Although neural fields provide a continuous and lightweight representation, previous research mostly relied on implicit smoothness. This study uses the optical flow equation for 2D+time computed tomography to improve neural fields using explicit PDE-based motion regularization.

Source: HackerNoon →


Share

BTCBTC
$102,469.00
0.55%
ETHETH
$3,454.72
3.64%
USDTUSDT
$0.999
0%
XRPXRP
$2.32
4.45%
BNBBNB
$997.82
3.63%
SOLSOL
$162.76
4.15%
USDCUSDC
$1.000
0%
STETHSTETH
$3,455.02
3.65%
TRXTRX
$0.292
2.13%
DOGEDOGE
$0.180
9.6%
ADAADA
$0.585
8.58%
FIGR_HELOCFIGR_HELOC
$1.04
1.33%
WSTETHWSTETH
$4,209.22
3.63%
WBTCWBTC
$102,305.00
0.82%
WBETHWBETH
$3,736.58
3.57%
WBTWBT
$53.84
3.84%
HYPEHYPE
$42.42
10.23%
LINKLINK
$15.76
5.55%
BCHBCH
$506.54
5.24%
ZECZEC
$598.39
1.8%