JaLCDOI | 10.18926/19955 |
---|---|
フルテキストURL | Mem_Fac_Eng_OU_44_13.pdf |
著者 | 金谷 健一| Sugaya Yasuyuki| |
抄録 | A new numerical scheme is presented for computing strict maximum likelihood (ML) of geometric fitting problems having an implicit constraint. Our approach is orthogonal projection of observations onto a parameterized surface defined by the constraint. Assuming a linearly separable nonlinear constraint, we show that a theoretically global solution can be obtained by iterative Sampson error minimization. Our approach is illustrated by ellipse fitting and fundamental matrix computation. Our method also encompasses optimal correction, computing, e.g., perpendiculars to an ellipse and triangulating stereo images. A detailed discussion is given to technical and practical issues about our approach. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2010-01 |
巻 | 44巻 |
開始ページ | 13 |
終了ページ | 23 |
ISSN | 1349-6115 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 120002309170 |
著者 | Kanatani, Kenichi| |
---|---|
発行日 | 2004-10 |
出版物タイトル | Pattern Analysis and Machine Intelligence |
資料タイプ | 学術雑誌論文 |
JaLCDOI | 10.18926/46952 |
---|---|
フルテキストURL | mfe_38_1-2_039_059.pdf |
著者 | Kanatani, Kenichi| |
抄録 | We investigate the meaning of "statistical methods" for geometric inference based on image feature points. Tracing back the origin of feature uncertainty to image processing operations, we discuss the implications of asymptotic analysis in reference to "geometric fitting" and "geometric model selection", We point out that a correspondence exists between the standard statistical analysis and the geometric inference problem. We also compare the capability of the "geometric AIC" and the "geometric MDL' in detecting degeneracy. Next, we review recent progress in geometric fitting techniques for linear constraints, describing the "FNS method", the "HEIV method", the "renormalization method", and other related techniques. Finally, we discuss the "Neyman-Scott problem" and "semiparametric models" in relation to geometric inference. We conclude that applications of statistical methods requires careful considerations about the nature of the problem in question. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2004-03 |
巻 | 38巻 |
号 | 1-2号 |
開始ページ | 39 |
終了ページ | 59 |
ISSN | 0475-0071 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 80016889442 |
JaLCDOI | 10.18926/14123 |
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フルテキストURL | Mem_Fac_Eng_OU_40_1_53.pdf |
著者 | 金谷 健一| 菅谷 保之| Hanno Ackermann| |
抄録 | In order to reconstruct 3-D Euclidean shape by the Tomasi-Kanade factorization, one needs to specify an affine camera model such as orthographic, weak perspective, and paraperspective. We present a new method that does not require any such specific models. We show that a minimal requirement for an affine camera to mimic perspective projection leads to a unique camera model, which we call a symmetric affine camera, which has two free functions. We determine their values from input images by linear computation and demonstrate by experiments that an appropriate camera model is automatically selected. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2006-01 |
巻 | 40巻 |
号 | 1号 |
開始ページ | 53 |
終了ページ | 63 |
ISSN | 0475-0071 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 120002308664 |
JaLCDOI | 10.18926/14087 |
---|---|
フルテキストURL | Mem_Fac_Eng_OU_41_1_73.pdf |
著者 | 金谷 健一| |
抄録 | A rigorous accuracy analysis is given to various techniques for estimating parameters of geometric models from noisy data for computer vision applications. First, it is pointed out that parameter estimation for vision applications is very different in nature from traditional statistical analysis and hence a different mathematical framework is necessary in such a domain. After general theories on estimation and accuracy are given, typical existing techniques are selected, and their accuracy is evaluated up to higher order terms. This leads to a “hyperaccurate” method that outperforms existing methods. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2007-01 |
巻 | 41巻 |
号 | 1号 |
開始ページ | 73 |
終了ページ | 92 |
ISSN | 0475-0071 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 120002308410 |
JaLCDOI | 10.18926/46970 |
---|---|
フルテキストURL | mfe_37_1_025_032.pdf |
著者 | Kanazawa, Yasushi| Kanatani, Kenichi| |
抄録 | We present a new method for detecting point matches between two images without using any combinatorial search. Our strategy is to impose various local and non-local constraints as "soft" constraints by introducing their "confidence" measures via "mean-field approximations". The computation is a cascade of evaluating the confidence values and sorting according to them. In the end, we impose the "hard" epipolar constraint by RANSAC. We also introduce a model selection procedure to test if the image mapping can be regarded as a homography. We demonstrate the effectiveness of our method by real image examples. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2002-11 |
巻 | 37巻 |
号 | 1号 |
開始ページ | 25 |
終了ページ | 32 |
ISSN | 0475-0071 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 80015664456 |
JaLCDOI | 10.18926/49320 |
---|---|
フルテキストURL | mfe_047_001_018.pdf |
著者 | Kanatani, Kenichi| |
抄録 | We summarize techniques for optimal geometric estimation from noisy observations for computer vision applications. We first discuss the interpretation of optimality and point out that geometric estimation is different from the standard statistical estimation. We also describe our noise modeling and a theoretical accuracy limit called the KCR lower bound. Then, we formulate estimation techniques based on minimization of a given cost function: least squares (LS), maximum likelihood (ML), which includes reprojection error minimization as a special case, and Sampson error minimization. We describe bundle adjustment and the FNS scheme for numerically solving them and the hyperaccurate correction that improves the accuracy of ML. Next, we formulate estimation techniques not based on minimization of any cost function: iterative reweight, renormalization, and hyper-renormalization. Finally, we show numerical examples to demonstrate that hyper-renormalization has higher accuracy than ML, which has widely been regarded as the most accurate method of all. We conclude that hyper-renormalization is robust to noise and currently is the best method. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2013-01 |
巻 | 47巻 |
開始ページ | 1 |
終了ページ | 18 |
ISSN | 1349-6115 |
言語 | 英語 |
著作権者 | Copyright © by the authors |
論文のバージョン | publisher |
NAID | 120005232372 |
JaLCDOI | 10.18926/14124 |
---|---|
フルテキストURL | Mem_Fac_Eng_OU_40_1_64.pdf |
著者 | 金谷 健一| |
抄録 | This article summarizes recent advancements of the theories and techniques for 3-D reconstruction from multiple images. We start with the description of the camera imaging geometry as perspective projection in terms of homogeneous coordinates and the definition of the intrinsic and extrinsic parameters of the camera. Next, we described the epipolar geometry for two, three, and four cameras, introducing such concepts as the fundamental matrix, epipolars, epipoles, the trifocal tensor, and the quadrifocal tensor. Then, we present the self-calibration technique based on the stratified reconstruction approach, using the absolute dual quadric constraint. Finally, we give the definition of the affine camera model and a procedure for 3-D reconstruction based on it. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2006-01 |
巻 | 40巻 |
号 | 1号 |
開始ページ | 64 |
終了ページ | 77 |
ISSN | 0475-0071 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 120002308332 |
JaLCDOI | 10.18926/19957 |
---|---|
フルテキストURL | Mem_Fac_Eng_OU_44_32.pdf |
著者 | 金谷 健一| Niitsuma Hirotaka| Sugaya Yasuyuki| |
抄録 | We present an alternative approach to what we call the “standard optimization”, which minimizes a cost function by searching a parameter space. Instead, the input is “orthogonally projected” in the joint input space onto the manifold defined by the “consistency constraint”, which demands that any minimal subset of observations produce the same result. This approach avoids many difficulties encountered in the standard optimization. As typical examples, we apply it to line fitting and multiview triangulation. The latter produces a new algorithm far more efficient than existing methods. We also discuss optimality of our approach. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2010-01 |
巻 | 44巻 |
開始ページ | 32 |
終了ページ | 41 |
ISSN | 1349-6115 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 120002309124 |
JaLCDOI | 10.18926/14155 |
---|---|
フルテキストURL | Mem_Fac_Eng_39_1_63.pdf |
著者 | 金谷 健一| |
抄録 | Geometric fitting is one of the most fundamental problems of computer vision. In [8], the author derived a theoretical accuracy bound (KCR lower bound) for geometric fitting in general and proved that maximum likelihood (ML) estimation is statistically optimal. Recently, Chernov and Lesort [3] proved a similar result, using a weaker assumption. In this paper, we compare their formulation with the author’s and describe the background of the problem. We also review recent topics including semiparametric models and discuss remaining issues. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2005-01 |
巻 | 39巻 |
号 | 1号 |
開始ページ | 63 |
終了ページ | 70 |
ISSN | 0475-0071 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 120002308366 |
JaLCDOI | 10.18926/48125 |
---|---|
フルテキストURL | mfe_046_001_009.pdf |
著者 | Kanatani, Kenichi| Niitsuma, Hirotaka| |
抄録 | We optimally estimate the similarity (rotation, translation, and scale change) between two sets of 3-D data in the presence of inhomogeneous and anisotropic noise. Adopting the Lie algebra representation of the 3-D rotational change, we derive the Levenberg-Marquardt procedure for simultaneously optimizing the rotation, the translation, and the scale change. We test the performance of our method using simulated stereo data and real GPS geodetic sensing data. We conclude that the conventional method assuming homogeneous and isotropic noise is insufficient and that our simultaneous optimization scheme can produce an accurate solution. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2012-01 |
巻 | 46巻 |
開始ページ | 1 |
終了ページ | 9 |
ISSN | 1349-6115 |
言語 | 英語 |
著作権者 | Copyright © by the authors |
論文のバージョン | publisher |
NAID | 80022451620 |
JaLCDOI | 10.18926/48127 |
---|---|
フルテキストURL | mfe_046_021_033.pdf |
著者 | Kanatani, Kenichi| Niitsuma, Hirotaka| |
抄録 | Because 3-D data are acquired using 3-D sensing such as stereo vision and laser range finders, they have inhomogeneous and anisotropic noise. This paper studies optimal computation of the similarity (rotation, translation, and scale change) of such 3-D data. We first point out that the Gauss-Newton and the Gauss-Helmert methods, regarded as different techniques, have similar structures. We then combine them to define what we call the modified Gauss-Helmert method and do stereo vision simulation to show that it is superior to either of the two in convergence performance. Finally, we show an application to real GPS geodetic data and point out that the widely used homogeneous and isotropic noise model is insufficient and that GPS geodetic data are prone to numerical problems. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2012-01 |
巻 | 46巻 |
開始ページ | 21 |
終了ページ | 33 |
ISSN | 1349-6115 |
言語 | 英語 |
著作権者 | Copyright © by the authors |
論文のバージョン | publisher |
NAID | 80022451622 |
JaLCDOI | 10.18926/44498 |
---|---|
フルテキストURL | mfe_045_036_045.pdf |
著者 | Kanatani, Kenichi| Niitsuma, Hirotaka| |
抄録 | We present a new method for optimally computing the 3-D rotation from two sets of 3-D data. Unlike 2-D data, the noise in 3-D data is inherently inhomogeneous and anisotropic, reflecting the characteristics of the 3-D sensing used. To cope with this, Ohta and Kanatani introduced a technique called “renormalization”. Following them, we represent a 3-D rotation in terms of a quaternion and compute an exact maximum likelihood solution using the FNS of Chojnacki et al. As an example, we consider 3-D data obtained by stereo vision and optimally compute the 3-D rotation by analyzing the noise characteristics of stereo reconstruction. We show that the widely used method is not suitable for 3-D data. We confirm that the renormalization of Ohta and Kanatani indeed computes almost an optimal solution and that, although the difference is small, the proposed method can compute an even better solution. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2011-01 |
巻 | 45巻 |
開始ページ | 36 |
終了ページ | 45 |
ISSN | 1349-6115 |
言語 | 英語 |
著作権者 | Copyright © by the authors |
論文のバージョン | publisher |
NAID | 80021759250 |
著者 | Kanatani, Kenichi| |
---|---|
発行日 | 2001-7 |
出版物タイトル | Computer Vision |
資料タイプ | 学術雑誌論文 |
JaLCDOI | 10.18926/47001 |
---|---|
フルテキストURL | mfe_36_1_059_077.pdf |
著者 | Kanatani, Kenichi| |
抄録 | Contrasting "geometric fitting", for which the noise level is taken as the asymptotic variable, with "statistical inference", for which the number of observations is taken as the asymptotic variable, we give a new definition of the "geometric AIC" and the "geometric MDL" as the counterparts of Akaike's AIC and Rissanen's MDL. We discuss various theoretical and practical problems that emerge from our analysis. Finally, we show, doing experiments using synthetic and real images, that the geometric MDL does not necessarily outperform the geometric AIC and that the two criteria have very different characteristics. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2001-12 |
巻 | 36巻 |
号 | 1号 |
開始ページ | 59 |
終了ページ | 77 |
ISSN | 0475-0071 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 80012855281 |
JaLCDOI | 10.18926/19956 |
---|---|
フルテキストURL | Mem_Fac_Eng_OU_44_24.pdf |
著者 | 金谷 健一| Sugaya Yasuyuki| |
抄録 | We present an improved version of the MSL method of Sugaya and Kanatani for multibody motion segmentation. We replace their initial segmentation based on heuristic clustering by an analytical computation based on GPCA, fitting two 2-D affine spaces in 3-D by the Taubin method. This initial segmentation alone can segment most of the motions in natural scenes fairly correctly, and the result is successively optimized by the EM algorithm in 3-D, 5-D, and 7-D. Using simulated and real videos, we demonstrate that our method outperforms the previous MSL and other existing methods. We also illustrate its mechanism by our visualization technique. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2010-01 |
巻 | 44巻 |
開始ページ | 24 |
終了ページ | 31 |
ISSN | 1349-6115 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 120002309159 |
JaLCDOI | 10.18926/19958 |
---|---|
フルテキストURL | Mem_Fac_Eng_OU_44_42.pdf |
著者 | 金谷 健一| Rangrajan Prasanna| |
抄録 | This paper presents a new method for fitting an ellipse to a point sequence extracted from images. It is widely known that the best fit is obtained by maximum likelihood. However, it requires iterations, which may not converge in the presence of large noise. Our approach is algebraic distance minimization; no iterations are required. Exploiting the fact that the solution depends on the way the scale is normalized, we analyze the accuracy to high order error terms with the scale normalization weight unspecified and determine it so that the bias is zero up to the second order. We demonstrate by experiments that our method is superior to the Taubin method, also algebraic and known to be highly accurate. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2010-01 |
巻 | 44巻 |
開始ページ | 42 |
終了ページ | 49 |
ISSN | 1349-6115 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 120002309054 |
JaLCDOI | 10.18926/44496 |
---|---|
フルテキストURL | mfe_045_015_026.pdf |
著者 | Kanatani, Kenichi| Rangrajan, Prasanna| Sugaya, Yasuyuki| Niitsuma, Hirotaka| |
抄録 | We present a new least squares (LS) estimator, called “HyperLS”, specifically designed for parameter estimation in computer vision applications. It minimizes the algebraic distance under a special scale normalization, which is derived by rigorous error analysis in such a way that statistical bias is removed up to second order noise terms. Numerical experiments suggest that our HyperLS is far superior to the standard LS and comparable in accuracy to maximum likelihood (ML), which is known to produce highly accurate results in image applications but may fail to converge if poorly initialized. Our HyperLS is a perfect candidate for ML initialization. In addition, we discuss how image-based inference problems have different characteristics form conventional statistical applications, with a view to serving as a bridge between mathematicians and computer engineers. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2011-01 |
巻 | 45巻 |
開始ページ | 15 |
終了ページ | 26 |
ISSN | 1349-6115 |
言語 | 英語 |
著作権者 | Copyright © by the authors |
論文のバージョン | publisher |
NAID | 120002905952 |
JaLCDOI | 10.18926/19959 |
---|---|
フルテキストURL | Mem_Fac_Eng_OU_44_50.pdf |
著者 | 金谷 健一| Niitsuma Hirotaka| Rangrajan Prasanna| |
抄録 | We present highly accurate least-squares (LS) alternatives to the theoretically optimal maximum likelihood (ML) estimator for homographies between two images. Unlike ML, our estimators are non-iterative and yield solutions even in the presence of large noise. By rigorous error analysis, we derive a “hyperaccurate” estimator which is unbiased up to second order noise terms. Then, we introduce a computational simplification, which we call “Taubin approximation”, without incurring a loss in accuracy. We experimentally demonstrate that our estimators have accuracy surpassing the traditional LS estimator and comparable to the ML estimator. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2010-01 |
巻 | 44巻 |
開始ページ | 50 |
終了ページ | 59 |
ISSN | 1349-6115 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 120002308986 |
JaLCDOI | 10.18926/14055 |
---|---|
フルテキストURL | Mem_Fac_Eng_OU_42_10.pdf |
著者 | 金谷 健一| |
抄録 | The author introduced the "geometric AIC" and the "geometric MDL" as model selection criteria for geometric fitting problems. These correspond to Akaike’s "AIC" and Rissanen's "BIC", respectively, well known in the statistical estimation framework. Another criterion well known is Schwarz’ "BIC", but its counterpart for geometric fitting has been unknown. This paper introduces the corresponding criterion, which we call the "geometric BIC", and shows that it is of the same form as the geometric MDL. We present the underlying logical reasoning of Bayesian estimation. |
出版物タイトル | Memoirs of the Faculty of Engineering, Okayama University |
発行日 | 2008-01 |
巻 | 42巻 |
号 | 1号 |
開始ページ | 10 |
終了ページ | 17 |
ISSN | 0475-0071 |
言語 | 英語 |
論文のバージョン | publisher |
NAID | 120002308447 |