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The Journal of Imaging Science and Technology (JIST) is dedicated to the advancement of imaging science knowledge, the practical applications of such knowledge, and how imaging science relates to other fields of study. The pages of this journal are open to reports of new theoretical or experimental results, and to comprehensive reviews. Only original manuscripts that have not been previously published, nor currently submitted for publication elsewhere, should be submitted.

IS&T's JIST-first publication option allows authors wishing to present their work at conferences, but have a journal citation for their paper, to submit a paper to JIST that follows the same rigorous peer-review vetting and publication process as traditional JIST articles, but with the benefit of a condensed time-to-publication time frame and guaranteed conference presentation slot.

Please note: For purposes of its Digital Library content, IS&T defines Open Access as papers that will be downloadable in their entirety for free in perpetuity. Copyright restrictions on papers vary; see individual paper for details.

Publisher: Society for Imaging Science and Technology

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Volume 65, Number 1, January 2021

Regular Articles

Open Access Content loaded within last 14 days From the Editor
pp. 10101-1-10101-1(1)
Author: Kuo, Chunghui


Content loaded within last 14 days The 3D-DTW Custom IP based FPGA Hardware Acceleration for Action Recognition
pp. 10401-1-10401-10(10)
Authors: Vidhyapathi, C. M.; Joseph Raj, Alex Noel; Sundar, S.


Content loaded within last 14 days Registration and Fusion of UAV LiDAR System Sequence Images and Laser Point Clouds
pp. 10501-1-10501-9(9)
Authors: Yu, Jiayong; Ma, Longchen; Tian, Maoyi; Lu, Xiushan


Content loaded within last 14 days The Effect of Camera Calibration on Multichannel Texture Classification
pp. 10503-1-10503-13(13)
Authors: Conni, Michele; Nussbaum, Peter; Green, Phil


Content loaded within last 14 days Land Cover Classification based on Deep Convolutional Neural Network with Feature-based Data Augmentation
pp. 10504-1-10504-10(10)
Authors: Wang, Bo; Huang, Chengeng; Guo, Yuhua; Tao, Jiahui


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