Eojindl Yi
KAIST
12 Papers
Eojindl Yi is an academic researcher from KAIST. The author has contributed to research in topics: Computer science & Point cloud. The author has an hindex of 2, co-authored 4 publications.
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Papers
•Proceedings Article
Linearly Replaceable Filters for Deep Network Channel Pruning.
Donggyu Joo,Eojindl Yi,Sunghyun Baek,Junmo Kim +3 more
- 18 May 2021
TL;DR: Linearly Replaceable Filter (LRF) as mentioned in this paper suggests that a filter that can be approximated by the linear combination of other filters is replaceable, and an additional method called Weights Compensation is proposed to support the LRF method.
PBP-Net: Point Projection and Back-Projection Network for 3D Point Cloud Segmentation
JuYoung Yang,Chanho Lee,Pyunghwan Ahn,Haeil Lee,Eojindl Yi,Junmo Kim +5 more
- 24 Oct 2020
TL;DR: Wang et al. as mentioned in this paper proposed a simple and efficient architecture named point projection and back-projection network (PBP-Net), which leverages 2D CNNs for the 3D point cloud segmentation.
11
Projection-Based Point Convolution for Efficient Point Cloud Segmentation
TL;DR: Projection-based Point Convolution (PPConv), a point convolutional module that uses 2D convolutions and multi-layer perceptrons (MLPs) as its components, achieves superior efficiency compared to state-of-the-art methods, even with a simple architecture based on PointNet++.
On the Angular Update and Hyperparameter Tuning of a Scale-Invariant Network
Juseung Yun,Janghyeon Lee,Hyo-Jung Shon,Eojindl Yi,Seungwook Kim,Junmo Kim +5 more
- 01 Jan 2022
TL;DR: In this article , the scale-invariance of neural network parameters is analyzed and a simple hyperparameter tuning method is derived to find a common feature of good hyperparameters combinations on such a scale invariant network, including learning rate, weight decay, and number of data samples.
3
Lightweight Monocular Depth Estimation via Token-Sharing Transformer
Dong-Jae Lee,Jae Young Lee,Hyo-Jung Shon,Eojindl Yi,Yeong-Hun Park,Sung-Jin Cho,Junmo Kim +6 more
- 29 May 2023
TL;DR: In this paper , a Token-Sharing Transformer (TST) was proposed for monocular depth estimation, which utilizes global token sharing to obtain an accurate depth prediction with high throughput in embedded devices.