Neural Field
Neural fields represent data as continuous functions parameterized by neural networks, aiming to efficiently and accurately model complex, high-dimensional data. Current research focuses on improving training speed and efficiency through novel initialization schemes and architectural designs, such as sinusoidal neural fields and multi-resolution approaches incorporating techniques like diffusion nets and Fourier features. These advancements are impacting diverse fields, enabling applications in 3D scene reconstruction, medical imaging (e.g., cardiac modeling, photoacoustic tomography), fluid dynamics simulation, and robotics, by offering flexible, continuous representations that surpass traditional methods in accuracy and efficiency.
Papers
LiDAR4D: Dynamic Neural Fields for Novel Space-time View LiDAR Synthesis
Zehan Zheng, Fan Lu, Weiyi Xue, Guang Chen, Changjun Jiang
Vestibular schwannoma growth prediction from longitudinal MRI by time conditioned neural fields
Yunjie Chen, Jelmer M. Wolterink, Olaf M. Neve, Stephan R. Romeijn, Berit M. Verbist, Erik F. Hensen, Qian Tao, Marius Staring