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author | Robert McIntyre <rlm@mit.edu> |
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date | Sat, 29 Mar 2014 16:22:49 -0400 |
parents | ff0d8955711e |
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1 #+title:Interesting Papers in Artificial Intelligence3 I decided to read all of the /titles/ in the Artificial Intelligence4 journal, and found these interesting papers. The entire title-reading5 process took about 2 hours.7 * Interesting Concept9 - (2002) Jordi Delgado - Emergence of social conventions in complex networks11 Here, "social conventions" means a very specific property of graphs12 in the context of game theory. Their social networks are groups of13 mindless automotaons which each have a single opinion that can take14 the values "A" or "B". They use the "coordination game" payoff15 matrix that engourages each pair of agents to agree with each other,16 and study various ways the graph can come to 90% of the agents all17 believe either "A" or "B". It's probably not useful for actual18 social worlds, and there's no simulation of any interesting19 environment, but it might be useful for designing protocols, or as a20 problem solving method.22 References:23 + L.A. Nunes Amaral, A. Scala, M. Barthélémy, H.E. Stanley, Classes24 of small-world networks, Proc. Nat. Acad. Sci. 97 (2000)25 11149–11152.26 + D.J Watts, S.H. Strogatz, Collective dynamics of small-world27 networks, Nature 393 (1998) 440–442.28 + Y. Shoham, M. Tennenholtz, On the emergence of social conventions:29 Modeling, analysis and simulations, Artificial Intelligence 9430 (1997) 139–166.32 - (1997) Yoav Shoham, Moshe Tennenholtz - On the emergence of social33 conventions: modeling, analysis, and simulations36 Marcelo A. Falappa, Gabriele Kern-Isberner, Guillermo R. Simari -37 Explanations, belief revision and defeasible reasoning39 Claudio Bettini, X.Sean Wang, Sushil Jajodia - Solving40 multi-granularity temporal constraint networks42 Alberto Maria Segre, Sean Forman, Giovanni Resta, Andrew Wildenberg -43 Nagging: A scalable fault-tolerant paradigm for distributed search45 Fahiem Bacchus, Xinguang Chen, Peter van Beek, Toby Walsh - Binary46 vs. non-binary constraints48 Jie Cheng, Russell Greiner, Jonathan Kelly, David Bell, Weiru Liu -49 Learning Bayesian networks from data: An information-theory based50 approach52 Kurt Engesser, Dov M. Gabbay - Quantum logic, Hilbert space, revision53 theory55 J.-D. Fouks, L. Signac - The problem of survival from an algorithmic56 point of view58 Catherine Carr - The MIT Encyclopedia of the Cognitive Sciences,59 edited by Robert Wilson and Frank Keil61 - Tim Taylor - Christoph Adami, Introduction to Artificial Life62 References:63 + M.A. Boden (Ed.), The Philosophy of Artificial Life, Oxford64 University Press, Oxford, 1996.65 + C.G. Langton (Ed.), Artificial Life: An Introduction, MIT Press,66 Cambridge, MA, 1995.68 A.S d'Avila Garcez, K Broda, D.M Gabbay - Symbolic knowledge69 extraction from trained neural networks: A sound approach71 José Hernández-Orallo - Truth from Trash. How Learning Makes Sense by72 Chris Thornton74 Fabio G. Cozman - Credal networks76 Aaron N. Kaplan, Lenhart K. Schubert - A computational model of belief78 Mike Perkowitz, Oren Etzioni - Towards adaptive Web sites: Conceptual79 framework and case study81 Wilhelm Rödder - Conditional logic and the Principle of Entropy83 Christian Vilhelm, Pierre Ravaux, Daniel Calvelo, Alexandre Jaborska,84 Marie-Christine Chambrin, Michel Boniface - Think!: A unified85 numerical–symbolic knowledge representation scheme and reasoning86 system88 Charles L. Ortiz Jr. - A commonsense language for reasoning about89 causation and rational action91 Raúl E. Valdés-Pérez - Principles of human—computer collaboration for92 knowledge discovery in science94 Paul Snow - The vulnerability of the transferable belief model to95 Dutch books97 Simon Kasif, Steven Salzberg, David Waltz, John Rachlin, David98 W. Aha - A probabilistic framework for memory-based reasoning100 Geoffrey LaForte, Patrick J. Hayes, Kenneth M. Ford - Why Gödel's101 theorem cannot refute computationalism103 Hiroshi Motoda, Kenichi Yoshida - Machine learning techniques to make104 computers easier to use106 Aravind K. Joshi - Role of constrained computational systems in107 natural language processing109 Moshe Tennenholtz - On stable social laws and qualitative equilibria111 Michael Arbib - The metaphorical brains113 Andrew Gelsey, Mark Schwabacher, Don Smith - Using modeling knowledge114 to guide design space search116 Márk Jelasity, József Dombi - GAS, a concept on modeling species in117 genetic algorithms119 Randall H. Wilson - Geometric reasoning about assembly tools121 Kurt Ammon - An automatic proof of Gödel's incompleteness theorem123 Shmuel Onn, Moshe Tennenholtz - Determination of social laws for124 multi-agent mobilization126 Stuart J. Russell - Rationality and intelligence128 Hidde de Jong, Arie Rip - The computer revolution in science: steps129 towards the realization of computer-supported discovery environments131 Adnan Darwiche, Judea Pearl - On the logic of iterated belief revision133 R.C. Holte, T. Mkadmi, R.M. Zimmer, A.J. MacDonald - Speeding up134 problem solving by abstraction: a graph oriented approach136 R. Holte, T. Mkadmi, R.M. Zimmer, A.J. McDonald - Speeding up problem137 solving by abstraction: a graph oriented approach139 Raúl E. Valdés-Pérez - A new theorem in particle physics enabled by140 machine discovery142 Dan Roth - On the hardness of approximate reasoning144 Bart Selman, David G. Mitchell, Hector J. Levesque - Generating hard145 satisfiability problems147 Herbert A. Simon - Artificial intelligence: an empirical science149 John K. Tsotsos - Behaviorist intelligence and the scaling problem151 Shigeki Goto, Hisao Nojima - Equilibrium analysis of the distribution152 of information in human society154 Raúl E. Valdés-Pérez - Machine discovery in chemistry: new results156 Stephen W. Smoliar - Artificial life: Christopher G. Langton, ed.158 Yoav Shoham, Moshe Tennenholtz - On social laws for artificial agent159 societies: off-line design161 Barbara Hayes-Roth - An architecture for adaptive intelligent systems163 Bruce Randall Donald - On information invariants in robotics165 Ian P. Gent, Toby Walsh - Easy problems are sometimes hard167 Tad Hogg, Colin P. Williams - The hardest constraint problems: A168 double phase transition170 Yoram Moses, Yoav Shoham - Belief as defeasible knowledge172 Donald Michie - Turing's test and conscious thought174 John McDermott - R1 (“XCON”) at age 12: lessons from an elementary175 school achiever177 Takeo Kanade - From a real chair to a negative chair179 Harry G. Barrow, J.M. Tenenbaum - Retrospective on “Interpreting line180 drawings as three-dimensional surfaces”182 Judea Pearl - Belief networks revisited184 Glenn A. Kramer - A geometric constraint engine186 Fausto Giunchiglia, Toby Walsh - A theory of abstraction188 John L. Pollock - How to reason defeasibly190 Aaron Sloman - The emperor's real mind: Review of Roger Penrose's the191 emperor's new mind: Concerning computers, minds and the laws of192 physics194 Olivier Dordan - Mathematical problems arising in qualitative195 simulation of a differential equation197 Eric Saund - Putting knowledge into a visual shape representation199 Michael Freund, Daniel Lehmann, Paul Morris - Rationality,200 transitivity, and contraposition202 Anthony S. Maida - Maintaining mental models of agents who have203 existential misconceptions205 Henry A. Kautz, Bart Selman - Hard problems for simple default logics207 Mark J. Stefik, Stephen Smoliar - Four reviews of The Society of Mind208 and a response210 Michael G. Dyer - A society of ideas on cognition: Review of Marvin211 Minsky's The Society of Mind213 Matthew Ginsberg - The society of mind: Marvin Minsky215 George N. Reeke Jr - The society of mind: Marvin Minsky217 Stephen W. Smoliar - The society of mind: Marvin Minsky219 Marvin Minsky - Society of mind: A response to four reviews221 Stephen W. Smoliar - How to build a person: A prolegomenon: John222 Pollock224 David Makinson, Karl Schlechta - Floating conclusions and zombie225 paths: Two deep difficulties in the “directly skeptical” approach to226 defeasible inheritance nets228 Donald A. Norman - Approaches to the study of intelligence230 Rodney A. Brooks - Intelligence without representation232 David Kirsh - Today the earwig, tomorrow man?234 Douglas B. Lenat, Edward A. Feigenbaum - On the thresholds of235 knowledge237 Jordan B. Pollack - Recursive distributed representations239 R. Bhaskar, Anil Nigam - Qualitative physics using dimensional240 analysis242 Don F. Beal - A generalised quiescence search algorithm244 Kai-Fu Lee, Sanjoy Mahajan - The development of a world class Othello245 program247 Helmut Horacek - Reasoning with uncertainty in computer chess249 Jeff Shrager - Induction: Process of inference, learning and250 discovery: John H. Holland, Keith J. Holyoak, Richard E. Nisbett, and251 Paul R. Thagard (MIT Press, Cambridge, MA, 1986); 355 pages253 Daniel S. Weld - The psychology of everyday things: Donald A. Norman,254 (Basic Books, New York, 1988); 257 pages, $19.95256 John R. Anderson - A theory of the origins of human knowledge258 G. Tesauro, T.J. Sejnowski - A parallel network that learns to play259 backgammon261 G. Priest - Reasoning about truth263 Donald Perlis - Truth and meaning265 Daniel S. Weld - Women, fire, and dangerous things: George Lakoff,266 (University of Chicago Press, Chicago, IL, 1987); 614 pages, $29.95268 Mark J. Stefik - On book reviews policy and process270 Robert K. Lindsay - The science of the mind: Owen J. Flanagan, Jr.,271 (MIT Press, Cambridge, MA, 1984); 290 pages273 Sheila Rock - On machine intelligence: Donald Michie, 2nd ed. (Ellis274 Horwood, Chichester, United Kingdom, 1986); 265 pages, £29.95276 Stephen W. Smoliar - Epistemology and cognition: A.I. Goldman,277 (Harvard University Press, Cambridge, MA, 1986); ix + 437 pages,278 $27.50280 David Elliot Shaw - On the range of applicability of an artificial281 intelligence machine283 Michael Gordon - Machine intelligence and related topics: An284 information scientist's weekend book: Donald Michie, (Gordon and285 Breach, New York, 1982); 328 pages, $57.75287 Ryszard S. Michalski, Patrick H. Winston - Variable precision logic289 Martin Herman, Takeo Kanade - Incremental reconstruction of 3D scenes290 from multiple, complex images292 vision : June 8–11, 1987, London, United Kingdom294 André Vellino - Artificial intelligence: The very idea: J. Haugeland,295 (MIT Press, Cambridge, MA, 1985); 287 pp.297 Judea Pearl - Fusion, propagation, and structuring in belief networks299 Daniel G. Bobrow - Scientific debate301 Mark Stefik - The AI business: Commercial uses of artificial302 intelligence: P.H. Winston and K.A. Prendergast, (MIT Press,303 Cambridge, MA 1984); 324 pages, $15.95305 Hans Berliner, Carl Ebeling - The SUPREM architecture: A new306 intelligent paradigm308 Donna Reese - Artificial intelligence: P.H. Winston, (Addison-Wesley,309 Reading, MA, 2nd ed., 1984); 527 pages311 Kenneth D. Forbus - Structure and interpretation of computer programs:312 H. Abelson and G.J. Sussman with J. Sussman, (MIT, Cambridge, 1985);313 503 pages315 Chia-Hoang Lee, Azriel Rosenfeld - Improved methods of estimating316 shape from shading using the light source coordinate system318 Daniel G. Bobrow, Patrick J. Hayes - Artificial intelligence — Where319 are we?321 Barbara J. Grosz - Natural-language processing323 Johan De Kleer - How circuits work325 G.D. Ritchie, F.K. Hanna - am: A case study in AI methodology327 Douglas B. Lenat, John Seely Brown - Why am and eurisko appear to work329 Elaine Kant - On the efficient synthesis of efficient programs331 Randall Davis, Reid G. Smith - Negotiation as a metaphor for332 distributed problem solving334 Patrick H. Winston - Learning new principles from precedents and335 exercises337 Paul S. Rosenbloom - A world-championship-level Othello program339 Tomas Lozano-Perez - Robotics341 Tom M. Mitchell - Generalization as search343 Dana S. Nau - The last player theorem345 Hans J. Berliner - Backgammon computer program beats world champion347 Gerald Jay Sussman, Guy Lewis Steele Jr. - Constraints—A language for348 expressing almost-hierarchical descriptions350 Takeo Kanade - A theory of Origami world352 Ria Follett - Synthesising recursive functions with side effects354 John McCarthy - Circumscription—A form of non-monotonic reasoning356 Michael A. Bauer - Programming by examples358 Patrick H. Winston - Learning by creatifying transfer frames360 Alan Bundy - Will it reach the top? Prediction in the mechanics world362 Richard M. Stallman, Gerald J. Sussman - Forward reasoning and363 dependency-directed backtracking in a system for computer-aided364 circuit analysis366 D. Marr - Artificial intelligence—A personal view368 Berthold K.P. Horn - Understanding image intensities370 F. Malloy Brown - Doing arithmetic without diagrams372 Azriel Rosenfeld - The psychology of computer vision: Patrick Henry373 Winston (ed.) McGraw-Hill, New York, 1975, vi+282 pages, $19.50375 R.C.T. Lee - On machine intelligence: D. Michie. Halstead Press, a376 division of John Wiley & Sons, 1974.378 W.W. Bledsoe, Peter Bruell - A man-machine theorem-proving system380 Gary G. Hendrix - Modeling simultaneous actions and continuous381 processes383 Yoshiaki Shirai - A context sensitive line finder for recognition of384 polyhedra386 Kenneth Mark Colby, Franklin Dennis Hilf, Sylvia Weber, Helena C387 Kraemer - Turing-like indistinguishability tests for the validation of388 a computer simulation of paranoid processes390 Aaron Sloman - Interactions between philosophy and artificial391 intelligence: The role of intuition and non-logical reasoning in392 intelligence394 * Story related396 Charles B. Callaway, James C. Lester - Narrative prose generation398 - Katja Markert, Udo Hahn :: Understanding metonymies in discourse399 Metonymies are difficult enough to drive these people to use the400 context of the sentences around the metonymy to interpret401 it. They create a set of heuristics which interpret402 metonomies. The first is obvious violations of sentence rules,403 such as having a non-agent do something only an agent can do.405 Another rule is that metonomyies should be more "apt", where it's406 more likely for a T.V. Screen to refer to the T.V. than a small407 button on the T.V., or a transistor.409 Metonymies should be very difficult for current parsers to410 understand, and are good examples, since they are short and411 require context and common sense.413 They have a dumb, ad-hoc "common sense database" that is414 dissapointing. It contains subclasses and has-a relations.416 References:417 + D.A. Cruse, On the transitivity of the part-whole relation,418 J. Linguistics 15 (1979) 29–38.419 good quotes:420 - We took the door off its hinges and went through it.421 - The house has a handle.sources424 Kathleen R. McKeown, Steven K. Feiner, Mukesh Dalal, Shih-Fu Chang -425 Generating multimedia briefings: coordinating language and426 illustration428 Varol Akman - Formalizing common sense: Papers by John McCarthy:429 V. Lifschitz, ed., (Ablex Publishing Corporation, Norwood, NJ, 1990);430 vi+256 pages, hardback, ISBN 0-89391-535-1 (Library of Congress:431 Q335.M38 1989)433 Akira Shimaya - Interpreting non-3-D line drawings435 Adam J. Grove - Naming and identity in epistemic logic part II: a436 first-order logic for naming438 Luc Lismont, Philippe Mongin - A non-minimal but very weak439 axiomatization of common belief441 on integration of natural language and vision processing443 Russell Greiner - Learning by understanding analogies445 * Review Articles447 H.Jaap van den Herik, Jos W.H.M. Uiterwijk, Jack van Rijswijck - Games448 solved: Now and in the future450 Jonathan Schaeffer, H.Jaap van den Herik - Games, computers, and451 artificial intelligence453 Peter A. Flach - On the state of the art in machine learning: A454 personal review456 A.G. Cohn, D. Perlis - “Field Reviews”: A new style of review article457 for Artificial Intelligence459 James Delgrande, Arvind Gupta, Tim Van Allen - A comparison of460 point-based approaches to qualitative temporal reasoning462 Weixiong Zhang, Rina Dechter, Richard E. Korf - Heuristic search in463 artificial intelligence465 Karen Sparck Jones - Information retrieval and artificial intelligence467 Wolfram Burgard, Armin B. Cremers, Dieter Fox, Dirk Hähnel, Gerhard468 Lakemeyer, Dirk Schulz, Walter Steiner, Sebastian Thrun - Experiences469 with an interactive museum tour-guide robot471 Minoru Asada, Hiroaki Kitano, Itsuki Noda, Manuela Veloso - RoboCup:472 Today and tomorrow—What we have learned474 Margaret A. Boden - Creativity and artificial intelligence476 Daniel G. Bobrow, J.Michael Brady - Artificial Intelligence 40 years477 later479 Fangzhen Lin, Hector J. Levesque - What robots can do: robot programs480 and effective achievability482 Melanie Mitchell - L.D. Davis, handbook of genetic algorithms484 Russell Greiner, Adam J. Grove, Alexander Kogan - Knowing what doesn't485 matter: exploiting the omission of irrelevant data487 W. Whitney, S. Rana, J. Dzubera, K.E. Mathias - Evaluating488 evolutionary algorithms490 David S. Touretzky - Neural networks in artificial intelligence:491 Matthew Zeidenberg493 Mark J. Stefik, Stephen W. Smoliar - The commonsense reviews495 Peter Szolovits, Stephen G. Pauker - Categorical and probabilistic496 reasoning in medicine revisited498 Daniel G. Bobrow - Artificial intelligence in perspective: a499 retrospective on fifty volumes of the Artificial Intelligence Journal501 David Kirsh - Foundations of AI: The big issues503 Hector J. Levesque - All I know: A study in autoepistemic logic505 J.T. Schwartz, M. Sharir - A survey of motion planning and related506 geometric algorithms508 Larry S. Davis, Azriel Rosenfeld - Cooperating processes for low-level509 vision: A survey511 Hans J. Berliner - A chronology of computer chess and its literature513 John McCarthy - Artificial intelligence: a paper symposium: Professor514 Sir James Lighthill, FRS. Artificial Intelligence: A General515 Survey. In: Science Research Council, 1973516 * Cortex related (sensory fusion / simulated worlds)518 Alfonso Gerevini, Jochen Renz - Combining topological and size519 information for spatial reasoning521 John Slaney, Sylvie Thiébaux - Blocks World revisited523 Wai K. Yeap, Margaret E. Jefferies - Computing a representation of the524 local environment526 R.P. Loui - On the origin of objects: B.C. Smith's MIT Press,527 Cambridge, MA, 1996. $37.50 (cloth). $17.50 (paper). 440 pages. ISBN528 0-262-69209-0530 Tze Yun Leong - Multiple perspective dynamic decision making532 Cristiano Castelfranchi - Modelling social action for AI agents534 Luc Steels - The origins of syntax in visually grounded robotic agents536 Sebastian Thrun - Learning metric-topological maps for indoor mobile537 robot navigation539 John Haugeland - Body and world: a review of What Computers Still540 Can't Do: A critique of artificial reason (Hubert L. Dreyfus): (MIT541 Press, Cambridge, MA, 1992); liii + 354 pages, $13.95543 David J. Musliner, Edmund H. Durfee, Kang G. Shin - World modeling for544 the dynamic construction of real-time control plans546 Jozsef A. Toth - Reasoning agents in a dynamic world: The frame547 problem: Kenneth M. Ford and Patrick J. Hayes, eds., (JAI Press,548 Greenwich, CT, 1991); 290+xiv pages550 Michael A. Arbib, Jim-Shih Liaw - Sensorimotor transformations in the551 worlds of frogs and robots553 Ingemar J. Cox, John J. Leonard - Modeling a dynamic environment using554 a Bayesian multiple hypothesis approach556 on integration of natural language and vision processing558 Demetri Terzopoulos, Andrew Witkin, Michael Kass - Constraints on559 deformable models:Recovering 3D shape and nonrigid motion561 Bruce R. Donald - A search algorithm for motion planning with six562 degrees of freedom564 Yorick Wilks - Making preferences more active566 * Vision Related568 Azriel Rosenfeld - B. Jähne, H. Haussecker, and P. Geissler, eds.,569 Handbook of Computer Vision and Applications. 1. Sensors and570 Imaging. 2. Signal Processing and Pattern Recognition. 3. Systems and571 Applications573 Thomas F. Stahovich, Randall Davis, Howard Shrobe - Qualitative574 rigid-body mechanics576 Tzachi Dar, Leo Joskowicz, Ehud Rivlin - Understanding mechanical577 motion: From images to behaviors579 Minoru Asada, Eiji Uchibe, Koh Hosoda - Cooperative behavior580 acquisition for mobile robots in dynamically changing real worlds via581 vision-based reinforcement learning and development583 Thomas F. Stahovich, Randall Davis, Howard Shrobe - Generating584 multiple new designs from a sketch586 Ernst D. Dickmanns - Vehicles capable of dynamic vision: a new breed587 of technical beings?589 Thomas G. Dietterich, Richard H. Lathrop, Tomás Lozano-Pérez - Solving590 the multiple instance problem with axis-parallel rectangles592 Rajesh P.N. Rao, Dana H. Ballard - An active vision architecture based593 on iconic representations595 John K. Tsotsos, Scan M. Culhane, Winky Yan Kei Wai, Yuzhong Lai, Neal596 Davis, Fernando Nuflo - Modeling visual attention via selective tuning598 Roger Mohr, Boubakeur Boufama, Pascal Brand - Understanding599 positioning from multiple images601 Andrew Zisserman, David Forsyth, Joseph Mundy, Charlie Rothwell, Jane602 Liu, Nic Pillow - 3D object recognition using invariance604 Naresh C. Gupta, Laveen N. Kanal - 3-D motion estimation from motion605 field607 Damian M. Lyons - Vision, instruction, and action: David Chapman, (MIT608 Press Cambridge, MA, 1991); 295 pages, $35.00, (paperback)610 Yoshinori Suganuma - Learning structures of visual patterns from611 single instances613 Dana H. Ballard - Animate vision615 Raymond Reiter, Alan K. Mackworth - A logical framework for depiction616 and image interpretation618 Ellen Lowenfeld Walker, Martin Herman - Geometric reasoning for619 constructing 3D scene descriptions from images621 Michele Barry, David Cyrluk, Deepak Kapur, Joseph Mundy, Van-Duc622 Nguyen - A multi-level geometric reasoning system for vision624 Alex P. Pentland - Shading into texture626 Brady - Parallelism in Vision628 Jon A. Webb, J.K. Aggarwal - Structure from motion of rigid and629 jointed objects631 Michael Brady - Computer vision633 Takeo Kanade - Recovery of the three-dimensional shape of an object634 from a single view636 Rodney A. Brooks - Symbolic reasoning among 3-D models and 2-D images638 H.K. Nishihara - Intensity, visible-surface, and volumetric639 representations641 Thomas O. Binford - Inferring surfaces from images643 Larry S. Davis, Azriel Rosenfeld - Cooperating processes for low-level644 vision: A survey646 - (1980) Berthold K.P. Horn, Brian G. Schunck - Determining optical647 flow649 Optical flow is an estimation of the movement of brightness650 patterns. If the image is "smooth" then optical flow is also an651 estimate of the movement of objects in the image (projected onto the652 plane of the image). They get some fairly good results on some very653 contrived examples. Important point is that calculating optical flow654 involves a relaxation process where the velocities of regions of655 constant brightness are inferred from the velocities of the edges of656 those regions.658 This paper is a lead up to Horn's book, Robot Vision.660 Hexagonal sampling may be a good alternative to rectangular661 sampling.663 A reduced version of this algorithm is implemented in hardware in664 optical mice to great effect.666 + Hamming, R.W., Numerical Methods for Scientists and Engineers667 (McGraw-Hill, New York, 1962).668 + Limb, J.O. and Murphy, J.A., Estimating the velocity of moving669 images in television signals, Computer Graphics and Image670 Processing 4 (4) (1975) 311-327.671 + Mersereau, R.M., The processing of hexagonally sampled672 two-dimensional signals, Proc. of the IEEE 67 (6) (1979) 930-949.675 - (1993) Berthold K.P. Horn, B.G. Schunck - “Determining optical flow”: a676 retrospective678 Very useful read where Horn criticies his previous paper.680 - Whishes that he distinguished "optical flow" form "motion681 field". "Optical flow" is an image property, whilc the "motion682 field" is the movement of objects in 3D space. "Optical flow" is a683 2D vector field; the "motion field" is 3D.684 - Wished he made the limitations of his algorithm more clear.685 - His original paper didn't concern itself with flow segmentation,686 which is required to interpret real world images with objects and687 a background.688 - Thinks that the best thing about the original paper is that it689 introduced variational calculus methods into computer vision.691 References:693 + R. Courant and D. Hilbert, Methods of Mathematical Physics694 (Interscience, New York, 1937/1953).695 + D. Mart, Vision (Freeman, San Francisco, CA, 1982).696 + C.M. Thompson, Robust photo-topography by fusing697 shape-from-shading and stereo,Ph.D. Thesis, Mechanical Engineering698 Department, MIT, Cambridge, MA (1993).699 + K. Ikeuchi and B.K.P. Horn, Numerical shape from shading and700 occluding boundaries, Artif lntell. 17 (1981) 141-184.702 Katsushi Ikeuchi, Berthold K.P. Horn - Numerical shape from shading703 and occluding boundaries705 Andrew P. Witkin - Recovering surface shape and orientation from706 texture708 Irwin Sobel - On calibrating computer controlled cameras for709 perceiving 3-D scenes711 P.M. Will, K.S. Pennington - Grid coding: A preprocessing technique712 for robot and machine vision714 M.B. Clowes - On seeing things716 Claude R. Brice, Claude L. Fennema - Scene analysis using regions718 * Cryo!720 - (1999) Kenneth D. Forbus, Peter B. Whalley, John O. Everett, Leo721 Ureel, Mike Brokowski, Julie Baher, Sven E. Kuehne - CyclePad: An722 articulate virtual laboratory for engineering thermodynamics724 Should learn about thermodynamics, and about "thermal cycles."725 http://www.qrg.northwestern.edu/projects/NSF/cyclepad/cyclepad.htm727 This system is more about expressing models and assumtions than728 automatically generating them, and as such is similiar to our "math729 language" idea.731 It's like a simple circuit modeller, and similar to Dylan's idea of732 an online circuit modeler.734 #+begin_quote735 We found that if CyclePad did not do the “obvious” propagation in736 preference to interpolation, students trusted it less.737 #+end_quote739 It's too bad that the paper doesn't mention the shortcommings of the740 system.742 + J.O. Everett, Topological inference of teleology: Deriving743 function from structure via evidential reasoning, Artificial744 Intelligence 113 (1999) 149–202.745 + P. Hayes, Naive physics 1: Ontology for liquids, in: J. Hobbs,746 R. Moore (Eds.), Formal Theories of the Commonsense World, Ablex,747 Norwood, NJ, 1985.748 + P. Nayak, Automated modeling of physical systems, Ph.D. Thesis,749 Computer Science Department, Stanford University, 1992.750 + R.W. Haywood, Analysis of Engineering Cycles: Power, Refrigerating751 and Gas Liquefaction Plant, Pergamon Press, 1985.752 + R.M. Stallman, G.J. Sussman, Forward reasoning and753 dependency-directed backtracking in a system for computer-aided754 circuit analysis, Artificial Intelligence 9 (1977) 135–196.755 + Dylan should read this, since it concerns his online circuit756 analysis idea.