1,319 research outputs found

    Recent Progress in Image Deblurring

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    This paper comprehensively reviews the recent development of image deblurring, including non-blind/blind, spatially invariant/variant deblurring techniques. Indeed, these techniques share the same objective of inferring a latent sharp image from one or several corresponding blurry images, while the blind deblurring techniques are also required to derive an accurate blur kernel. Considering the critical role of image restoration in modern imaging systems to provide high-quality images under complex environments such as motion, undesirable lighting conditions, and imperfect system components, image deblurring has attracted growing attention in recent years. From the viewpoint of how to handle the ill-posedness which is a crucial issue in deblurring tasks, existing methods can be grouped into five categories: Bayesian inference framework, variational methods, sparse representation-based methods, homography-based modeling, and region-based methods. In spite of achieving a certain level of development, image deblurring, especially the blind case, is limited in its success by complex application conditions which make the blur kernel hard to obtain and be spatially variant. We provide a holistic understanding and deep insight into image deblurring in this review. An analysis of the empirical evidence for representative methods, practical issues, as well as a discussion of promising future directions are also presented.Comment: 53 pages, 17 figure

    Stereoscopic Calculation Model Based on Fixational Eye Movements

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    Fixational eye movement is an essential function for watching things using the retina, which has the property of responding only to changes in incident light. However, since the rotation of the eyeball causes the translational movement of the crystalline lens, it is possible in principle to recover the depth of the object from the moving image obtained in this way. We have proposed two types of depth restoration methods based on fixation tremor; differential-type method and integral-type method. The first is based on the change in image brightness between frames, and the latter is based on image blurring due to movement. In this chapter, we introduce them and explain the simulations and experiments performed to verify their operation

    New Datasets, Models, and Optimization

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    ํ•™์œ„๋…ผ๋ฌธ(๋ฐ•์‚ฌ) -- ์„œ์šธ๋Œ€ํ•™๊ต๋Œ€ํ•™์› : ๊ณต๊ณผ๋Œ€ํ•™ ์ „๊ธฐยท์ •๋ณด๊ณตํ•™๋ถ€, 2021.8. ์†ํ˜„ํƒœ.์‚ฌ์ง„ ์ดฌ์˜์˜ ๊ถ๊ทน์ ์ธ ๋ชฉํ‘œ๋Š” ๊ณ ํ’ˆ์งˆ์˜ ๊นจ๋—ํ•œ ์˜์ƒ์„ ์–ป๋Š” ๊ฒƒ์ด๋‹ค. ํ˜„์‹ค์ ์œผ๋กœ, ์ผ์ƒ์˜ ์‚ฌ์ง„์€ ์ž์ฃผ ํ”๋“ค๋ฆฐ ์นด๋ฉ”๋ผ์™€ ์›€์ง์ด๋Š” ๋ฌผ์ฒด๊ฐ€ ์žˆ๋Š” ๋™์  ํ™˜๊ฒฝ์—์„œ ์ฐ๋Š”๋‹ค. ๋…ธ์ถœ์‹œ๊ฐ„ ์ค‘์˜ ์นด๋ฉ”๋ผ์™€ ํ”ผ์‚ฌ์ฒด๊ฐ„์˜ ์ƒ๋Œ€์ ์ธ ์›€์ง์ž„์€ ์‚ฌ์ง„๊ณผ ๋™์˜์ƒ์—์„œ ๋ชจ์…˜ ๋ธ”๋Ÿฌ๋ฅผ ์ผ์œผํ‚ค๋ฉฐ ์‹œ๊ฐ์ ์ธ ํ™”์งˆ์„ ์ €ํ•˜์‹œํ‚จ๋‹ค. ๋™์  ํ™˜๊ฒฝ์—์„œ ๋ธ”๋Ÿฌ์˜ ์„ธ๊ธฐ์™€ ์›€์ง์ž„์˜ ๋ชจ์–‘์€ ๋งค ์ด๋ฏธ์ง€๋งˆ๋‹ค, ๊ทธ๋ฆฌ๊ณ  ๋งค ํ”ฝ์…€๋งˆ๋‹ค ๋‹ค๋ฅด๋‹ค. ๊ตญ์ง€์ ์œผ๋กœ ๋ณ€ํ™”ํ•˜๋Š” ๋ธ”๋Ÿฌ์˜ ์„ฑ์งˆ์€ ์‚ฌ์ง„๊ณผ ๋™์˜์ƒ์—์„œ์˜ ๋ชจ์…˜ ๋ธ”๋Ÿฌ ์ œ๊ฑฐ๋ฅผ ์‹ฌ๊ฐํ•˜๊ฒŒ ํ’€๊ธฐ ์–ด๋ ค์šฐ๋ฉฐ ํ•ด๋‹ต์ด ํ•˜๋‚˜๋กœ ์ •ํ•ด์ง€์ง€ ์•Š์€, ์ž˜ ์ •์˜๋˜์ง€ ์•Š์€ ๋ฌธ์ œ๋กœ ๋งŒ๋“ ๋‹ค. ๋ฌผ๋ฆฌ์ ์ธ ์›€์ง์ž„ ๋ชจ๋ธ๋ง์„ ํ†ตํ•ด ํ•ด์„์ ์ธ ์ ‘๊ทผ๋ฒ•์„ ์„ค๊ณ„ํ•˜๊ธฐ๋ณด๋‹ค๋Š” ๋จธ์‹ ๋Ÿฌ๋‹ ๊ธฐ๋ฐ˜์˜ ์ ‘๊ทผ๋ฒ•์€ ์ด๋Ÿฌํ•œ ์ž˜ ์ •์˜๋˜์ง€ ์•Š์€ ๋ฌธ์ œ๋ฅผ ํ‘ธ๋Š” ๋ณด๋‹ค ํ˜„์‹ค์ ์ธ ๋‹ต์ด ๋  ์ˆ˜ ์žˆ๋‹ค. ํŠนํžˆ ๋”ฅ ๋Ÿฌ๋‹์€ ์ตœ๊ทผ ์ปดํ“จํ„ฐ ๋น„์ „ ํ•™๊ณ„์—์„œ ํ‘œ์ค€์ ์ธ ๊ธฐ๋ฒ•์ด ๋˜์–ด ๊ฐ€๊ณ  ์žˆ๋‹ค. ๋ณธ ํ•™์œ„๋…ผ๋ฌธ์€ ์‚ฌ์ง„ ๋ฐ ๋น„๋””์˜ค ๋””๋ธ”๋Ÿฌ๋ง ๋ฌธ์ œ์— ๋Œ€ํ•ด ๋”ฅ ๋Ÿฌ๋‹ ๊ธฐ๋ฐ˜ ์†”๋ฃจ์…˜์„ ๋„์ž…ํ•˜๋ฉฐ ์—ฌ๋Ÿฌ ํ˜„์‹ค์ ์ธ ๋ฌธ์ œ๋ฅผ ๋‹ค๊ฐ์ ์œผ๋กœ ๋‹ค๋ฃฌ๋‹ค. ์ฒซ ๋ฒˆ์งธ๋กœ, ๋””๋ธ”๋Ÿฌ๋ง ๋ฌธ์ œ๋ฅผ ๋‹ค๋ฃจ๊ธฐ ์œ„ํ•œ ๋ฐ์ดํ„ฐ์…‹์„ ์ทจ๋“ํ•˜๋Š” ์ƒˆ๋กœ์šด ๋ฐฉ๋ฒ•์„ ์ œ์•ˆํ•œ๋‹ค. ๋ชจ์…˜ ๋ธ”๋Ÿฌ๊ฐ€ ์žˆ๋Š” ์ด๋ฏธ์ง€์™€ ๊นจ๋—ํ•œ ์ด๋ฏธ์ง€๋ฅผ ์‹œ๊ฐ„์ ์œผ๋กœ ์ •๋ ฌ๋œ ์ƒํƒœ๋กœ ๋™์‹œ์— ์ทจ๋“ํ•˜๋Š” ๊ฒƒ์€ ์‰ฌ์šด ์ผ์ด ์•„๋‹ˆ๋‹ค. ๋ฐ์ดํ„ฐ๊ฐ€ ๋ถ€์กฑํ•œ ๊ฒฝ์šฐ ๋””๋ธ”๋Ÿฌ๋ง ์•Œ๊ณ ๋ฆฌ์ฆ˜๋“ค์„ ํ‰๊ฐ€ํ•˜๋Š” ๊ฒƒ ๋ฟ๋งŒ ์•„๋‹ˆ๋ผ ์ง€๋„ํ•™์Šต ๊ธฐ๋ฒ•์„ ๊ฐœ๋ฐœํ•˜๋Š” ๊ฒƒ๋„ ๋ถˆ๊ฐ€๋Šฅํ•ด์ง„๋‹ค. ๊ทธ๋Ÿฌ๋‚˜ ๊ณ ์† ๋น„๋””์˜ค๋ฅผ ์‚ฌ์šฉํ•˜์—ฌ ์นด๋ฉ”๋ผ ์˜์ƒ ์ทจ๋“ ํŒŒ์ดํ”„๋ผ์ธ์„ ๋ชจ๋ฐฉํ•˜๋ฉด ์‹ค์ œ์ ์ธ ๋ชจ์…˜ ๋ธ”๋Ÿฌ ์ด๋ฏธ์ง€๋ฅผ ํ•ฉ์„ฑํ•˜๋Š” ๊ฒƒ์ด ๊ฐ€๋Šฅํ•˜๋‹ค. ๊ธฐ์กด์˜ ๋ธ”๋Ÿฌ ํ•ฉ์„ฑ ๊ธฐ๋ฒ•๋“ค๊ณผ ๋‹ฌ๋ฆฌ ์ œ์•ˆํ•˜๋Š” ๋ฐฉ๋ฒ•์€ ์—ฌ๋Ÿฌ ์›€์ง์ด๋Š” ํ”ผ์‚ฌ์ฒด๋“ค๊ณผ ๋‹ค์–‘ํ•œ ์˜์ƒ ๊นŠ์ด, ์›€์ง์ž„ ๊ฒฝ๊ณ„์—์„œ์˜ ๊ฐ€๋ฆฌ์›Œ์ง ๋“ฑ์œผ๋กœ ์ธํ•œ ์ž์—ฐ์Šค๋Ÿฌ์šด ๊ตญ์†Œ์  ๋ธ”๋Ÿฌ์˜ ๋ณต์žก๋„๋ฅผ ๋ฐ˜์˜ํ•  ์ˆ˜ ์žˆ๋‹ค. ๋‘ ๋ฒˆ์งธ๋กœ, ์ œ์•ˆ๋œ ๋ฐ์ดํ„ฐ์…‹์— ๊ธฐ๋ฐ˜ํ•˜์—ฌ ์ƒˆ๋กœ์šด ๋‹จ์ผ์˜์ƒ ๋””๋ธ”๋Ÿฌ๋ง์„ ์œ„ํ•œ ๋‰ด๋Ÿด ๋„คํŠธ์›Œํฌ ๊ตฌ์กฐ๋ฅผ ์ œ์•ˆํ•œ๋‹ค. ์ตœ์ ํ™”๊ธฐ๋ฒ• ๊ธฐ๋ฐ˜ ์ด๋ฏธ์ง€ ๋””๋ธ”๋Ÿฌ๋ง ๋ฐฉ์‹์—์„œ ๋„๋ฆฌ ์“ฐ์ด๊ณ  ์žˆ๋Š” ์ ์ฐจ์  ๋ฏธ์„ธํ™” ์ ‘๊ทผ๋ฒ•์„ ๋ฐ˜์˜ํ•˜์—ฌ ๋‹ค์ค‘๊ทœ๋ชจ ๋‰ด๋Ÿด ๋„คํŠธ์›Œํฌ๋ฅผ ์„ค๊ณ„ํ•œ๋‹ค. ์ œ์•ˆ๋œ ๋‹ค์ค‘๊ทœ๋ชจ ๋ชจ๋ธ์€ ๋น„์Šทํ•œ ๋ณต์žก๋„๋ฅผ ๊ฐ€์ง„ ๋‹จ์ผ๊ทœ๋ชจ ๋ชจ๋ธ๋“ค๋ณด๋‹ค ๋†’์€ ๋ณต์› ์ •ํ™•๋„๋ฅผ ๋ณด์ธ๋‹ค. ์„ธ ๋ฒˆ์งธ๋กœ, ๋น„๋””์˜ค ๋””๋ธ”๋Ÿฌ๋ง์„ ์œ„ํ•œ ์ˆœํ™˜ ๋‰ด๋Ÿด ๋„คํŠธ์›Œํฌ ๋ชจ๋ธ ๊ตฌ์กฐ๋ฅผ ์ œ์•ˆํ•œ๋‹ค. ๋””๋ธ”๋Ÿฌ๋ง์„ ํ†ตํ•ด ๊ณ ํ’ˆ์งˆ์˜ ๋น„๋””์˜ค๋ฅผ ์–ป๊ธฐ ์œ„ํ•ด์„œ๋Š” ๊ฐ ํ”„๋ ˆ์ž„๊ฐ„์˜ ์‹œ๊ฐ„์ ์ธ ์ •๋ณด์™€ ํ”„๋ ˆ์ž„ ๋‚ด๋ถ€์ ์ธ ์ •๋ณด๋ฅผ ๋ชจ๋‘ ์‚ฌ์šฉํ•ด์•ผ ํ•œ๋‹ค. ์ œ์•ˆํ•˜๋Š” ๋‚ด๋ถ€ํ”„๋ ˆ์ž„ ๋ฐ˜๋ณต์  ์—ฐ์‚ฐ๊ตฌ์กฐ๋Š” ๋‘ ์ •๋ณด๋ฅผ ํšจ๊ณผ์ ์œผ๋กœ ํ•จ๊ป˜ ์‚ฌ์šฉํ•จ์œผ๋กœ์จ ๋ชจ๋ธ ํŒŒ๋ผ๋ฏธํ„ฐ ์ˆ˜๋ฅผ ์ฆ๊ฐ€์‹œํ‚ค์ง€ ์•Š๊ณ ๋„ ๋””๋ธ”๋Ÿฌ ์ •ํ™•๋„๋ฅผ ํ–ฅ์ƒ์‹œํ‚จ๋‹ค. ๋งˆ์ง€๋ง‰์œผ๋กœ, ์ƒˆ๋กœ์šด ๋””๋ธ”๋Ÿฌ๋ง ๋ชจ๋ธ๋“ค์„ ๋ณด๋‹ค ์ž˜ ์ตœ์ ํ™”ํ•˜๊ธฐ ์œ„ํ•ด ๋กœ์Šค ํ•จ์ˆ˜๋ฅผ ์ œ์•ˆํ•œ๋‹ค. ๊นจ๋—ํ•˜๊ณ  ๋˜๋ ทํ•œ ์‚ฌ์ง„ ํ•œ ์žฅ์œผ๋กœ๋ถ€ํ„ฐ ์ž์—ฐ์Šค๋Ÿฌ์šด ๋ชจ์…˜ ๋ธ”๋Ÿฌ๋ฅผ ๋งŒ๋“ค์–ด๋‚ด๋Š” ๊ฒƒ์€ ๋ธ”๋Ÿฌ๋ฅผ ์ œ๊ฑฐํ•˜๋Š” ๊ฒƒ๊ณผ ๋งˆ์ฐฌ๊ฐ€์ง€๋กœ ์–ด๋ ค์šด ๋ฌธ์ œ์ด๋‹ค. ๊ทธ๋Ÿฌ๋‚˜ ํ†ต์ƒ ์‚ฌ์šฉํ•˜๋Š” ๋กœ์Šค ํ•จ์ˆ˜๋กœ ์–ป์€ ๋””๋ธ”๋Ÿฌ๋ง ๋ฐฉ๋ฒ•๋“ค์€ ๋ธ”๋Ÿฌ๋ฅผ ์™„์ „ํžˆ ์ œ๊ฑฐํ•˜์ง€ ๋ชปํ•˜๋ฉฐ ๋””๋ธ”๋Ÿฌ๋œ ์ด๋ฏธ์ง€์˜ ๋‚จ์•„์žˆ๋Š” ๋ธ”๋Ÿฌ๋กœ๋ถ€ํ„ฐ ์›๋ž˜์˜ ๋ธ”๋Ÿฌ๋ฅผ ์žฌ๊ฑดํ•  ์ˆ˜ ์žˆ๋‹ค. ์ œ์•ˆํ•˜๋Š” ๋ฆฌ๋ธ”๋Ÿฌ๋ง ๋กœ์Šค ํ•จ์ˆ˜๋Š” ๋””๋ธ”๋Ÿฌ๋ง ์ˆ˜ํ–‰์‹œ ๋ชจ์…˜ ๋ธ”๋Ÿฌ๋ฅผ ๋ณด๋‹ค ์ž˜ ์ œ๊ฑฐํ•˜๋„๋ก ์„ค๊ณ„๋˜์—ˆ๋‹ค. ์ด์— ๋‚˜์•„๊ฐ€ ์ œ์•ˆํ•œ ์ž๊ธฐ์ง€๋„ํ•™์Šต ๊ณผ์ •์œผ๋กœ๋ถ€ํ„ฐ ํ…Œ์ŠคํŠธ์‹œ ๋ชจ๋ธ์ด ์ƒˆ๋กœ์šด ๋ฐ์ดํ„ฐ์— ์ ์‘ํ•˜๋„๋ก ํ•  ์ˆ˜ ์žˆ๋‹ค. ์ด๋ ‡๊ฒŒ ์ œ์•ˆ๋œ ๋ฐ์ดํ„ฐ์…‹, ๋ชจ๋ธ ๊ตฌ์กฐ, ๊ทธ๋ฆฌ๊ณ  ๋กœ์Šค ํ•จ์ˆ˜๋ฅผ ํ†ตํ•ด ๋”ฅ ๋Ÿฌ๋‹์— ๊ธฐ๋ฐ˜ํ•˜์—ฌ ๋‹จ์ผ ์˜์ƒ ๋ฐ ๋น„๋””์˜ค ๋””๋ธ”๋Ÿฌ๋ง ๊ธฐ๋ฒ•๋“ค์„ ์ œ์•ˆํ•œ๋‹ค. ๊ด‘๋ฒ”์œ„ํ•œ ์‹คํ—˜ ๊ฒฐ๊ณผ๋กœ๋ถ€ํ„ฐ ์ •๋Ÿ‰์  ๋ฐ ์ •์„ฑ์ ์œผ๋กœ ์ตœ์ฒจ๋‹จ ๋””๋ธ”๋Ÿฌ๋ง ์„ฑ๊ณผ๋ฅผ ์ฆ๋ช…ํ•œ๋‹ค.Obtaining a high-quality clean image is the ultimate goal of photography. In practice, daily photography is often taken in dynamic environments with moving objects as well as shaken cameras. The relative motion between the camera and the objects during the exposure causes motion blur in images and videos, degrading the visual quality. The degree of blur strength and the shape of motion trajectory varies by every image and every pixel in dynamic environments. The locally-varying property makes the removal of motion blur in images and videos severely ill-posed. Rather than designing analytic solutions with physical modelings, using machine learning-based approaches can serve as a practical solution for such a highly ill-posed problem. Especially, deep-learning has been the recent standard in computer vision literature. This dissertation introduces deep learning-based solutions for image and video deblurring by tackling practical issues in various aspects. First, a new way of constructing the datasets for dynamic scene deblurring task is proposed. It is nontrivial to simultaneously obtain a pair of the blurry and the sharp image that are temporally aligned. The lack of data prevents the supervised learning techniques to be developed as well as the evaluation of deblurring algorithms. By mimicking the camera image pipeline with high-speed videos, realistic blurry images could be synthesized. In contrast to the previous blur synthesis methods, the proposed approach can reflect the natural complex local blur from and multiple moving objects, varying depth, and occlusion at motion boundaries. Second, based on the proposed datasets, a novel neural network architecture for single-image deblurring task is presented. Adopting the coarse-to-fine approach that is widely used in energy optimization-based methods for image deblurring, a multi-scale neural network architecture is derived. Compared with the single-scale model with similar complexity, the multi-scale model exhibits higher accuracy and faster speed. Third, a light-weight recurrent neural network model architecture for video deblurring is proposed. In order to obtain a high-quality video from deblurring, it is important to exploit the intrinsic information in the target frame as well as the temporal relation between the neighboring frames. Taking benefits from both sides, the proposed intra-frame iterative scheme applied to the RNNs achieves accuracy improvements without increasing the number of model parameters. Lastly, a novel loss function is proposed to better optimize the deblurring models. Estimating a dynamic blur for a clean and sharp image without given motion information is another ill-posed problem. While the goal of deblurring is to completely get rid of motion blur, conventional loss functions fail to train neural networks to fulfill the goal, leaving the trace of blur in the deblurred images. The proposed reblurring loss functions are designed to better eliminate the motion blur and to produce sharper images. Furthermore, the self-supervised learning process facilitates the adaptation of the deblurring model at test-time. With the proposed datasets, model architectures, and the loss functions, the deep learning-based single-image and video deblurring methods are presented. Extensive experimental results demonstrate the state-of-the-art performance both quantitatively and qualitatively.1 Introduction 1 2 Generating Datasets for Dynamic Scene Deblurring 7 2.1 Introduction 7 2.2 GOPRO dataset 9 2.3 REDS dataset 11 2.4 Conclusion 18 3 Deep Multi-Scale Convolutional Neural Networks for Single Image Deblurring 19 3.1 Introduction 19 3.1.1 Related Works 21 3.1.2 Kernel-Free Learning for Dynamic Scene Deblurring 23 3.2 Proposed Method 23 3.2.1 Model Architecture 23 3.2.2 Training 26 3.3 Experiments 29 3.3.1 Comparison on GOPRO Dataset 29 3.3.2 Comparison on Kohler Dataset 33 3.3.3 Comparison on Lai et al. [54] dataset 33 3.3.4 Comparison on Real Dynamic Scenes 34 3.3.5 Effect of Adversarial Loss 34 3.4 Conclusion 41 4 Intra-Frame Iterative RNNs for Video Deblurring 43 4.1 Introduction 43 4.2 Related Works 46 4.3 Proposed Method 50 4.3.1 Recurrent Video Deblurring Networks 51 4.3.2 Intra-Frame Iteration Model 52 4.3.3 Regularization by Stochastic Training 56 4.4 Experiments 58 4.4.1 Datasets 58 4.4.2 Implementation details 59 4.4.3 Comparisons on GOPRO [72] dataset 59 4.4.4 Comparisons on [97] Dataset and Real Videos 60 4.5 Conclusion 61 5 Learning Loss Functions for Image Deblurring 67 5.1 Introduction 67 5.2 Related Works 71 5.3 Proposed Method 73 5.3.1 Clean Images are Hard to Reblur 73 5.3.2 Supervision from Reblurring Loss 75 5.3.3 Test-time Adaptation by Self-Supervision 76 5.4 Experiments 78 5.4.1 Effect of Reblurring Loss 78 5.4.2 Effect of Sharpness Preservation Loss 80 5.4.3 Comparison with Other Perceptual Losses 81 5.4.4 Effect of Test-time Adaptation 81 5.4.5 Comparison with State-of-The-Art Methods 82 5.4.6 Real World Image Deblurring 85 5.4.7 Combining Reblurring Loss with Other Perceptual Losses 86 5.4.8 Perception vs. Distortion Trade-Off 87 5.4.9 Visual Comparison of Loss Function 88 5.4.10 Implementation Details 89 5.4.11 Determining Reblurring Module Size 94 5.5 Conclusion 95 6 Conclusion 97 ๊ตญ๋ฌธ ์ดˆ๋ก 115 ๊ฐ์‚ฌ์˜ ๊ธ€ 117๋ฐ•

    Sparse variational regularization for visual motion estimation

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    The computation of visual motion is a key component in numerous computer vision tasks such as object detection, visual object tracking and activity recognition. Despite exten- sive research effort, efficient handling of motion discontinuities, occlusions and illumina- tion changes still remains elusive in visual motion estimation. The work presented in this thesis utilizes variational methods to handle the aforementioned problems because these methods allow the integration of various mathematical concepts into a single en- ergy minimization framework. This thesis applies the concepts from signal sparsity to the variational regularization for visual motion estimation. The regularization is designed in such a way that it handles motion discontinuities and can detect object occlusions

    Recent Progress in Image Deblurring

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    This paper comprehensively reviews the recent development of image deblurring, including non-blind/blind, spatially invariant/variant deblurring techniques. Indeed, these techniques share the same objective of inferring a latent sharp image from one or several corresponding blurry images, while the blind deblurring techniques are also required to derive an accurate blur kernel. Considering the critical role of image restoration in modern imaging systems to provide high-quality images under complex environments such as motion, undesirable lighting conditions, and imperfect system components, image deblurring has attracted growing attention in recent years. From the viewpoint of how to handle the ill-posedness which is a crucial issue in deblurring tasks, existing methods can be grouped into five categories: Bayesian inference framework, variational methods, sparse representation-based methods, homography-based modeling, and region-based methods. In spite of achieving a certain level of development, image deblurring, especially the blind case, is limited in its success by complex application conditions which make the blur kernel hard to obtain and be spatially variant. We provide a holistic understanding and deep insight into image deblurring in this review. An analysis of the empirical evidence for representative methods, practical issues, as well as a discussion of promising future directions are also presented

    Motion Offset for Blur Modeling

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    Motion blur caused by the relative movement between the camera and the subject is often an undesirable degradation of the image quality. In most conventional deblurring methods, a blur kernel is estimated for image deconvolution. Due to the ill-posed nature, predefined priors are proposed to suppress the ill-posedness. However, these predefined priors can only handle some specific situations. In order to achieve a better deblurring performance on dynamic scene, deep-learning based methods are proposed to learn a mapping function that restore the sharp image from a blurry image. The blur may be implicitly modelled in feature extraction module. However, the blur modelled from the paired dataset cannot be well generalized to some real-world scenes. To summary, an accurate and dynamic blur model that more closely approximates real-world blur is needed. By revisiting the principle of camera exposure, we can model the blur with the displacements between sharp pixels and the exposed pixel, namely motion offsets. Given specific physical constraints, motion offsets are able to form different exposure trajectories (i.e. linear, quadratic). Compare to conventional blur kernel, our proposed motion offsets are a more rigorous approximation for real-world blur, since they can constitute a non-linear and non-uniform motion field. Through learning from dynamic scene dataset, an accurate and spatial-variant motion offset field is obtained. With accurate motion information and a compact blur modeling method, we explore the ways of utilizing motion information to facilitate multiple blur-related tasks. By introducing recovered motion offsets, we build up a motion-aware and spatial-variant convolution. For extracting a video clip from a blurry image, motion offsets can provide an explicit (non-)linear motion trajectory for interpolating. We also work towards a better image deblurring performance in real-world scenarios by improving the generalization ability of the deblurring model

    Robotic Crop Interaction in Agriculture for Soft Fruit Harvesting

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    Autonomous tree crop harvesting has been a seemingly attainable, but elusive, robotics goal for the past several decades. Limiting grower reliance on uncertain seasonal labour is an economic driver of this, but the ability of robotic systems to treat each plant individually also has environmental benefits, such as reduced emissions and fertiliser use. Over the same time period, effective grasping and manipulation (G&M) solutions to warehouse product handling, and more general robotic interaction, have been demonstrated. Despite research progress in general robotic interaction and harvesting of some specific crop types, a commercially successful robotic harvester has yet to be demonstrated. Most crop varieties, including soft-skinned fruit, have not yet been addressed. Soft fruit, such as plums, present problems for many of the techniques employed for their more robust relatives and require special focus when developing autonomous harvesters. Adapting existing robotics tools and techniques to new fruit types, including soft skinned varieties, is not well explored. This thesis aims to bridge that gap by examining the challenges of autonomous crop interaction for the harvesting of soft fruit. Aspects which are known to be challenging include mixed obstacle planning with both hard and soft obstacles present, poor outdoor sensing conditions, and the lack of proven picking motion strategies. Positioning an actuator for harvesting requires solving these problems and others specific to soft skinned fruit. Doing so effectively means addressing these in the sensing, planning and actuation areas of a robotic system. Such areas are also highly interdependent for grasping and manipulation tasks, so solutions need to be developed at the system level. In this thesis, soft robotics actuators, with simplifying assumptions about hard obstacle planes, are used to solve mixed obstacle planning. Persistent target tracking and filtering is used to overcome challenging object detection conditions, while multiple stages of object detection are applied to refine these initial position estimates. Several picking motions are developed and tested for plums, with varying degrees of effectiveness. These various techniques are integrated into a prototype system which is validated in lab testing and extensive field trials on a commercial plum crop. Key contributions of this thesis include I. The examination of grasping & manipulation tools, algorithms, techniques and challenges for harvesting soft skinned fruit II. Design, development and field-trial evaluation of a harvester prototype to validate these concepts in practice, with specific design studies of the gripper type, object detector architecture and picking motion for this III. Investigation of specific G&M module improvements including: o Application of the autocovariance least squares (ALS) method to noise covariance matrix estimation for visual servoing tasks, where both simulated and real experiments demonstrated a 30% improvement in state estimation error using this technique. o Theory and experimentation showing that a single range measurement is sufficient for disambiguating scene scale in monocular depth estimation for some datasets. o Preliminary investigations of stochastic object completion and sampling for grasping, active perception for visual servoing based harvesting, and multi-stage fruit localisation from RGB-Depth data. Several field trials were carried out with the plum harvesting prototype. Testing on an unmodified commercial plum crop, in all weather conditions, showed promising results with a harvest success rate of 42%. While a significant gap between prototype performance and commercial viability remains, the use of soft robotics with carefully chosen sensing and planning approaches allows for robust grasping & manipulation under challenging conditions, with both hard and soft obstacles

    Visual motion : algorithms for analysis and application

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    Thesis (M.S.)--Massachusetts Institute of Technology, Dept. of Architecture, 1990.Includes bibliographical references (leaves 71-73).by Michael Adam Sokolov.M.S

    Super-resolution:A comprehensive survey

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