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1 Multi-Task Semi-Supervised Underwater Mine Detection Lawrence Carin, Qiuhua Liu and Xuejun Liao Duke University Jason Stack Office of Naval Research.

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Presentation on theme: "1 Multi-Task Semi-Supervised Underwater Mine Detection Lawrence Carin, Qiuhua Liu and Xuejun Liao Duke University Jason Stack Office of Naval Research."— Presentation transcript:

1 1 Multi-Task Semi-Supervised Underwater Mine Detection Lawrence Carin, Qiuhua Liu and Xuejun Liao Duke University Jason Stack Office of Naval Research

2 Intra-Scene Context

3 What Analyst Processes Individual Signatures Processed by Supervised Classifiers Message: Analyst Places Classification of Any Given Item Within Context of All Items in the Scene Supervised Classifier Classifies Each Item in Isolation

4 Decision surface based on labeled data (supervised) Decision surface based on labeled & Unlabeled data (semi-supervised)

5 Inter-Scene Context

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8 8 Message  Humans are very good at exploiting context, both within a given scene and across multiple scenes  Intra-scene context: semi-supervised learning  Inter-scene context: multi-task and transfer learning  A major focus of machine learning these days

9 9 Data Manifold Representation Based on Markov Random Walks Given X={x 1, …,x N }, first construct a graph G=(X,W), with the affinity matrix W, where the (i, j)-th element of W is defined by a Gaussian kernel: we consider a Markov transition matrix A, which defines a Markov random walk, where the (i, j)-th element: gives the probability of walking from x i to x j by a single step. The one-step Markov random work provides a local similarity measure between data points.

10 10 Semi-Supervised Multitask Learning(1/2) Semi-supervised MTL: Given M partially labeled data manifolds, each defining a classification task, we propose a unified sharing structure to learn the M classifiers simultaneously. The Sharing Prior: We consider M PNBC classifiers, parameterized by The M classifiers are not independent but coupled by a joint prior distribution:

11 11 Semi-Supervised Multitask Learning(2/2) With  The normal distributions indicates the meta-knowledge indicating how the present task should be learned, based on the experience with a previous task.  When there are no previous tasks, only the baseline prior is used by setting m=1 =>PNBC.  Sharing tasks to have similar, not exactly the same(advantages over the Dirac delta function used in previous MTL work). Baseline prior Prior transferred from previous tasks Balance parameter

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