Mercurial > cortex
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beginning extensive literature review.
author | Robert McIntyre <rlm@mit.edu> |
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date | Sun, 10 Mar 2013 18:17:53 +0000 |
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children | 9c37a55e1cd2 |
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1 * Object Recognition from Local Scale-Invariant Features, David G. Lowe3 This is the famous SIFT paper that is mentioned everywhere.5 This is a way to find objects in images given an image of that6 object. It is moderately risistant to variations in the sample image7 and the target image. Basically, this is a fancy way of picking out8 a test pattern embedded in a larger pattern. It would fail to learn9 anything resembling object categories, for instance. Usefull concept10 is the idea of storing the local scale and rotation of each feature11 as it is extracted from the image, then checking to make sure that12 proposed matches all more-or-less agree on shift, rotation, scale,13 etc. Another good idea is to use points instead of edges, since14 they seem more robust.16 ** References:17 - Basri, Ronen, and David. W. Jacobs, “Recognition using region18 correspondences,” International Journal of Computer Vision, 25, 219 (1996), pp. 141–162.21 - Edelman, Shimon, Nathan Intrator, and Tomaso Poggio, “Complex22 cells and object recognition,” Unpublished Manuscript, preprint at23 http://www.ai.mit.edu/edelman/mirror/nips97.ps.Z25 - Lindeberg, Tony, “Detecting salient blob-like image structures26 and their scales with a scale-space primal sketch: a method for27 focus-of-attention,” International Journal of Computer Vision, 11, 328 (1993), pp. 283–318.30 - Murase, Hiroshi, and Shree K. Nayar, “Visual learning and31 recognition of 3-D objects from appearance,” International Journal32 of Computer Vision, 14, 1 (1995), pp. 5–24.34 - Ohba, Kohtaro, and Katsushi Ikeuchi, “Detectability, uniqueness,35 and reliability of eigen windows for stable verification of36 partially occluded objects,” IEEE Trans. on Pattern Analysis and37 Machine Intelligence, 19, 9 (1997), pp. 1043–48.39 - Zhang, Z., R. Deriche, O. Faugeras, Q.T. Luong, “A robust40 technique for matching two uncalibrated images through the recovery41 of the unknown epipolar geometry,” Artificial In- telligence, 78,42 (1995), pp. 87-119.