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Avalanche Ski-Resort Snow-Clad Mountain Moving Vistas: Exploiting Motion for Describing Scenes Nitesh Shroff, Pavan Turaga, Rama Chellappa University of Maryland, College Park Problem Definition and Motivation Contributions Dynamic Attributes Dynamic Attributes motion information from a global perspective. Characterize the unconstrained dynamics of scenes using Chaotic Invariants. Does not require localization or tracking of scene elements. Unconstrained real world Dynamic Scene dataset. Dynamic Scene Recognition Dynamics of scene reveals further information !! Motion of scene elements improve or deteriorate classification? How to expand the scope of scene classification to videos? What makes it difficult? Scenes are unconstrained and ‘in-the-wild’ -- Large variation in scale, view, illumination, background Underlying physics of motion -- too complicated or very little is understood of them. Ray of hope !!! Underlying process not entirely random but has deterministic component Can we characterize motion at a global level ?? Yes using dynamic attributes and chaotic invariants Modeling Dynamics Requires No assumptions Purely from the sequence of observations. Fundamental notion -- all variables in a influence one another. Constructs state variables from given time series Estimate embedding dimension and delay Chaotic Invariants[2,4] Class LDS[3] (GIST) Bag of Words Mean (GIST) Dynamics (Chaos) Statics+ Dynamics Toranado7010706090 Waves4050708090 Chaotic Traffic1020305070 Whirlpool2030403040 Total2524403652 [1] A.Oliva and A. Torralba. Modeling the shape of the scene: A holistic representation of the spatial envelope. IJCV, 2001 [2] M. Perc. The dynamics of human gait. European journal of physics, 26(3):525–534, 2005 [3] G. Doretto, A. Chiuso, Y. Wu, and S. Soatto. Dynamic textures, IJCV, 2003 [4]S. Ali, A. Basharat, and M. Shah. Chaotic Invariants for Human Action Recognition. ICCV, 2007. References Degree of Busyness: Amount of activity in the video. Highly busy: Sea-waves or Traffic scene --high degree of detailed motion patterns. Low busyness: Waterfall -- largely unchanging and motion typically in a small portion Degree of Flow Granularity of the structural elements that undergo motion. Degree of Regularity Degree of Busyness Reconstruct the phase space. Characterize it using invariants Lyapunov Exponent: Rate of separation of nearby trajectories. Correlation Integral: Density of phase space. Correlation Dimension: Change in the density of phase space Coarse: falling rocks in a landslide. Fine: waves in an ocean D egree of Regularity of motion of structural elements. Irregular or random motion: chaotic traffic Regular motion: smooth traffic Algorithmic Layout GIST [1] for each frame Each dimension as time series Chaotic Invariants Classification & Learn Attributes Unconstrained YouTube videos Large Intra-class variation Available at http://www.umiacs.umd.edu/users/nshroff/DynamicScene.html Dynamic Scene Dataset Recognition Accuracy Linear Separation using Attributes 18 out of 20 correctly classified WhirlpoolWaves Busyness
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