.ps11 INTERPRETATION OF IMAGE FLOW: A SPATIO-TEMPORAL APPROACH
نویسنده
چکیده
Research on the interpretation of image flow (or optical flow) until now has mainly focused on instantaneous flow fields. This limits the scope of the problems that one can address and the accuracy of the results. Here we extend a previous formulation of the problem to incorporate temporal variation of image flow. We illustrate our approach by solving specific cases which are of practical significance including simple cases of non-rigid and non-uniform motions. The formulation is general in that it is applicable to any situation provided that the scene geometry, the scene transformation, and the image flow are all ‘‘smooth’’ or analytic. For the case of rigid and uniform motion we have obtained some results which are of practical value. We have shown that only the first-order spatial and temporal derivatives of image flow are sufficient to recover the local surface orientation and motion; second-order (or higher order) derivatives whose measurement is unreliable are not necessary. (In comparison, previous methods use up to second-order spatial derivatives.). Further, the representation and the solution method used here have some advantages in comparison with the existing approaches; they facilitate a uniform approach to all cases of rigid motion (including the case of interpreting instantaneous visual motion). Index Terms Three-dimensional interpretation of image flow, optical flow, motion analysis, surface structure and transformation recovery.
منابع مشابه
STCS-GAF: Spatio-Temporal Compressive Sensing in Wireless Sensor Networks- A GAF-Based Approach
Routing and data aggregation are two important techniques for reducing communication cost of wireless sensor networks (WSNs). To minimize communication cost, routing methods can be merged with data aggregation techniques. Compressive sensing (CS) is one of the effective techniques for aggregating network data, which can reduce the cost of communication by reducing the amount of routed data to t...
متن کاملInterpretation of Image Flow: A Spatio-Temporal Approach
Research on the interpretation of image flow (or optical flow) until now has mainly focused on instantaneous flow fields. This limits the scope of the problems that one can address and the accuracy of the results. Here we extend a previous formulation of the problem to incorporate temporal variation of image flow. We illustrate our approach by solving specific cases which are of practical signi...
متن کاملSpatio-Temporal Modeling for Knowledge Discovery in Satellite Image Databases
Knowledge discovery from satellite images in spatio-temporal context remains one of the major challenges in the remote sensing field. It is, always, difficult for a user to manually extract useful information especially when processing a large collection of satellite images. Thus, we need to use automatic knowledge discovery in order to develop intelligent image interpretation systems. In this ...
متن کاملA Variational Framework for Image Segmentation Combining Motion Estimation and Shape Regularization
Based on a geometric interpretation of the optic flow constraint equation, we propose a conditional probability on the spatio-temporal image gradient. We consistently derive a variational approach for the segmentation of the image domain into regions of homogeneous motion. The proposed energy functional extends the MumfordShah functional from gray value segmentation to motion segmentation. It d...
متن کاملSpatio-temporal analysis of the covid-19 impacts on the using Chicago urban shared bicycles by tensor-based approach
Cycling is a phenomenon in urban transportation that has the ability to allocate a specific location at any moment in time. Accordingly, spatial analysis of bicycle trips can be accompanied by temporal analysis. The use of a GIS environment is commonly recommended to display the extent of the phenomenon's spatial changes. However, in order to apply and display changes over time, it will requir...
متن کامل