YOU ARE DOWNLOADING DOCUMENT

Please tick the box to continue:

Transcript
Page 1: Temporal Video Boundaries

Temporal Video Bound-aries

Computer Science EngineeringLee Sang Seon

Page 2: Temporal Video Boundaries

WhyTemporal Video Boundaries

Techniqueis useful in the

Video content analysis?

Page 3: Temporal Video Boundaries

Index Introduction Basic notions for temporal video boundaries Micro-Boundaries Macro-Boundaries Mega-Boundaries Conclusion Q & A

Page 4: Temporal Video Boundaries

Introduction Brief definition of Temporal Video Boundary

technique→ Examine the temporal boundary problem at

different levels of video content structure analysis

Why we need Temporal Video Boundary technique?

Show example

Page 5: Temporal Video Boundaries

Example : Oscar awards

Insufficient metadata

opening

ending

Page 6: Temporal Video Boundaries

Example : Oscar awards

Detailed metadata

opening

ending

actor

winners

awards

ending

Page 7: Temporal Video Boundaries

Basic notions - modali-ties Video contains three types of modalities (i) Visual (ii) Audio (iii) Textual

Each modality has three levels(i) low-level (ii) mid -level (iii) high-level→ levels describe the amount of details described in each modality in terms of granularity and ab-straction

Page 8: Temporal Video Boundaries

Basic notions - modali-ties For each modality and for each level there if

a set of attributes. These can be formalized as vectors:

Page 9: Temporal Video Boundaries

Basic notions - modali-ties Adding to this, given a set of vectors

→ their average value denote the vector

Page 10: Temporal Video Boundaries

Basic notions - method Local method→ the difference is computed between con-

secutive frames

Global method→ the difference if computed over a series of

frames

Page 11: Temporal Video Boundaries

Micro-Boundaries Definition

Boundaries associated to the smallest video units for which a given attribute is constant or slowly varying

The attribute can be any feature in the visual, audio, or text domain

Page 12: Temporal Video Boundaries

Example

Page 13: Temporal Video Boundaries

Make family histogram

Data structure that represents the color in-formation of a family of frames.

Set of frames that exhibits uniform features

= Frame histogram

Page 14: Temporal Video Boundaries

Histogram difference measures Histogram difference using L1 metrics

Bin-wise histogram intersection

Total number of color bins used

Histogram of previous frame

Histogram of current frame

Page 15: Temporal Video Boundaries

Merging of family his-tograms

Page 16: Temporal Video Boundaries

Multiple ways to compare and merge families - contiguity & memory

1. Contiguous with zero memory → A new frame histogram is compared with

previous frame histogram

2. Contiguous with limited memory→ A new frame histogram is compared with

previous family histogram

Page 17: Temporal Video Boundaries

Multiple ways to compare and merge families - contiguity & memory

3. Non contiguous with unlimited memory → A new frame histogram is compared with all

previous family histograms within the same video.

4. Hybrid→ First a new frame histogram is compared using

the contiguous frames and then generated fam-ily histograms are merged using non contigu-ous case.

Page 18: Temporal Video Boundaries

Compare different Histogram difference measures

Page 19: Temporal Video Boundaries

Macro-Boundaries Definition

Boundaries between collections of video micro-segments that are clearly identifiable organic parts of an event defining a structural (action) or thematic (story) unit

Video : collection of stories that may or may not be interconnected

→ Macro-Boundaries detection= Segmenting stories

textual cues

audio cuesvisual cues

Page 20: Temporal Video Boundaries

Two types of uniform segment detection Unimodal segment detection

A video segment exhibits same characteristic over a period of time

Multimodal segment detection A video segment exhibits a certain characteris-

tic taking into account attributes from different modalities

Page 21: Temporal Video Boundaries

Single Modality Segmen-taion

Partition a continuous bit-stream of audio data into non-

overlapping segments

Classification

Seven mid-level audio cate-gories

Using low-level audio features

Audio segmen-tation & classifi-

cationText transcript

Extracted from either the closed captions or speech-to-

text conversion

Segmented and categorized with respect to a predefined

topic list

Frequency-of-word-occurrence metric is used

Page 22: Temporal Video Boundaries

Multimodal Segmentaion

Pre-merging Steps

Uniform seg-ment detec-

tion

Intra-modal segment clus-

tering

Attribute template de-termination

Dominant at-tribute de-

termination

Template ap-plication

Descent Methods

Goal :Create macro-bound-

aries that are more ac-curate than the bound-aries produced by indi-

vidual modalities.

Page 23: Temporal Video Boundaries

Descent MethodsText seg-

ment

Audio segment

Video segment

Page 24: Temporal Video Boundaries

Single descent Method

Single descent with intersecting

union

Single descent with intersec-

tion

Single descent with secondary

voting attributes

Single descent with conditional

union

Page 25: Temporal Video Boundaries

Mega-Boundaries Definition

Boundaries between collections of macro-seg-ments that exhibit different structural and fea-ture consistency (e.g. different genres)

Example Commercial detection method

Page 26: Temporal Video Boundaries

Trigger & Verifiers Model

Features that can aid in determining the location of the commercial break

Triggers

Features that can determine the boundaries of the commercial break

Veri-fiers

Page 27: Temporal Video Boundaries

Black framesTime interval be-tween detected black frames as

triggers

Used as verifiers

Letterbox change

High cut rate(= low cut distance)

Page 28: Temporal Video Boundaries

Bayesian Belief Network Modelstart

Page 29: Temporal Video Boundaries

Genetic Algorithms

Page 30: Temporal Video Boundaries

ConclusionType of bound-

aries Methods Example

Micro-boundaries Frame & Family histogram comparing and merging

Visual scene segmenta-tion

Macro-boundaries Single modality segmenta-tion

&Multimodal segmentation

Multimodal story segmen-tation

Mega-boundaries Trigger & Verifier Commercial detection

Page 31: Temporal Video Boundaries

Whenever metadata is availableor unavailable,

we can segment video by using this technique that

categorized three types

Page 32: Temporal Video Boundaries

&Thank you!

Q & A


Related Documents