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Question Answering from Errorful Multimedia Streams ARDA AQUAINT

Question Answering from Errorful Multimedia Streams ARDA AQUAINT. Finding Better Answers in Video Using Pseudo Relevance Feedback Informedia Project Carnegie Mellon University. Carnegie Mellon. Outline. Pseudo-Relevance Feedback for Imagery Experimental Evaluation Results Conclusions.

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Question Answering from Errorful Multimedia Streams ARDA AQUAINT

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  1. Question Answering from Errorful Multimedia StreamsARDA AQUAINT Finding Better Answers in Video Using Pseudo Relevance Feedback Informedia Project Carnegie Mellon University Carnegie Mellon

  2. Outline • Pseudo-Relevance Feedback for Imagery • Experimental Evaluation • Results • Conclusions

  3. Motivation • Question Answering from multimedia streams • Questions contain text and visual components • Want a good image that represents the ‘answer’ • Improve performance of images retrieved as answers • Relevance feedback works for text retrieval !

  4. Finding Similar Images by Color

  5. Finding Similar Scenes

  6. Similarity Challenge: Images containing similar content

  7. QUERY SYSTEM RESULTS Relevance Judgment Feedback HUMAN • Why Pseudo? QUERY SYSTEM RESULTS Feedback without human intervention What is Pseudo Relevance Feedback • Relevance Feedback (Human intervention)

  8. Query Text Image Text Score Image Score Final Score Original System Architecture • Simply weighted linear combination of video, audio and text retrieval score Retrieval Agents

  9. Query Text Image Retrieval Agents Image Score PRF Score Text Score Final Score System Architecture with PRF • New step: • Classification through Pseudo Relevance Feedback (PRF) • Combine with all other information agents (text, image)

  10. Classification from Modified PRF • Automatic retrieval technique • Modification: use negative data as feedback • Step-by-step • Run base retrieval algorithm on image collection • K-Nearest neighbor (KNN) on color and texture • Build classifier • Negative examples: least relevant images in the collection • Positive examples: image queries • Classify all data in the collection to obtain ranked results

  11. The Basic PRF Algorithm for Image Retrieval Input Query Examples q1 … qn Target Examples t1 … tn ========================= Output Final score Fi and final ranking for every target ti ========================= Algorithm Given initial score s0i for each ti based on f0(ti, q1 … qn) Using an initial similarity measure f0 as a base Iterate k = 1 … max Given score ski, sample positive instances pki and negative instances nki using sampling strategy S Compute updated retrieval score sik+1= fik+1(ti) where fik+1 is trained/learned using nki,pki Combine all scores for final score Fi =g(s0 … smax)

  12. Analysis: PRF on Synthetic Data

  13. PRF on Synthetic Data

  14. Evaluation using the 2002 TREC Video Retrieval Task • Independent collection, queries, relevant results available • Search Collection • Total Length: 40.16 hours • MPEG-1 format • Collected from Internet Archive and Open Video websites, documentaries from the ‘50s • 14,000 shots • 292,000 I-frames (images) • Query • 25 queries • Text, Image(Optional), Video(Optional)

  15. Summary of ’02 Video Queries

  16. Analysis of Queries (2002) • Specific item or person • Eddie Rickenbacker, James Chandler, George Washington, Golden Gate Bridge, Price Tower in Bartlesville, OK • Specific fact • Arch in Washington Square Park in NYC, map of continental US • Instances of a category • football players, overhead views of cities, one or more women standing in long dresses • Instances of events/activities • people spending leisure time at the beach, one or more musicians with audible music, crowd walking in an urban environment, locomotive approaching the viewer

  17. Sample Query and Target Query: Find pictures of Harry Hertz, Director of the National Quality Program, NIST

  18. Speech: We’re looking for people that have a broad range of expertise that have business knowledge that have knowledge on quality management on quality improvement and in particular … OCR:H,arry Hertz a Director aro 7 wa-,i,,ty Program,Harry Hertz a Director Sample Query and Target Query: Find pictures of Harry Hertz, Director of the National Quality Program, NIST

  19. Example Images

  20. Example Images Selected for PRF

  21. Combination of Agents • Multiple Agents • Text Retrieval Agent • Base Image Retrieval Agent • Nearest Neighbor on Color • Nearest Neighbor on Texture • Classification PRF Agent • Combination of multiple agents • Convert scores to posterior probability • Linear combination of probabilities

  22. 2002 Results *Video OCR was not relevant in this collection

  23. Distance Function for Query 75

  24. Distance Function for Query 89

  25. Effect of Pos/Neg Ratio and Combination Weight

  26. Selection of Negative Images + Combination

  27. Discussion & Future Work • Discussion • Results are sensitive to queries with small numbers of answers • Images alone cannot fully represent the query semantics • Future Work • Incorporate more agents • Utilize the relationship between multiple agent information • Better combination scheme • Include web image search (e.g. Google) as query expansion

  28. Conclusions • Pseudo-relevance feedback works for text retrieval • This is not directly applicable to image retrieval from video due to low precision in the top answers • Negative PRF was effective for finding better images

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