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Volodymyr Bobyr Supervised by Aayushjungbahadur Rana

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Presentation on theme: "Volodymyr Bobyr Supervised by Aayushjungbahadur Rana"— Presentation transcript:

1 Volodymyr Bobyr Supervised by Aayushjungbahadur Rana
Week 7 Volodymyr Bobyr Supervised by Aayushjungbahadur Rana

2 Goals Goal Completed ✓ Running In Queue Centroids Output
Centroids Benchmark Combined Action & Relation Results Running Split Action & Relation Results In Queue

3 Centroids Purpose: object tracking & distinction
Label: Gaussian point applied at the center of object bounding boxes Output: Binary label for each pixel (0-1) Threshold is applied at testing Attempts: Loss – MSE: noisy, pattern-less output Inconsistent among first, middle, last frames Improvements: Switched to BinaryLoss Increased centroid loss weight (2:1) Label

4 Actions & Relations Actions: Relations: Nuances: # Classes: 42
Ex: ‘hold’, ‘look_at’, ‘bite’ Relations: # Classes: 8 Ex: ‘next_to’, ‘in_front’, ‘behind’ #𝑟𝑒𝑙𝑎𝑡𝑖𝑜𝑛𝑠≈ # 𝑜𝑏𝑗𝑒𝑐𝑡𝑠 2 Nuances: A lot more relational data Different feature relationship between actions and relations

5 Relations for 4 objects in frame 468
Problems Heavy relation/action imbalance Solution: class weights Possible difference in features between relations/actions Solution: split output Consequence: +10m parameters Actions & Relations increase train time x4.5 Possible Explanation: #bboxes≈2 ∗ #𝑜𝑏𝑗 2 ≈ #𝑜𝑏𝑗 2 All the bboxes have to be augmented Consequence: 16 𝑚𝑖𝑛 𝑒𝑝𝑜𝑐ℎ  72 𝑚𝑖𝑛 𝑒𝑝𝑜𝑐ℎ Partial Solution: optimization

6 Combined Model – Experimental Results
Object Segmentation: Similar results to when done without action & relation segmentation CCE expected cap: 0.60 IOU expected cap: 0.36 Action & Relation segmentation Accuracy going up Unexpected behavior in IoU

7 Combined Model – Experimental Results
Centroid Detection

8 Proposed Model Structures
Split Simple Combined Simple Object Segmentation Object Segmentation Centroids Encoder Decoder Centroids Encoder Decoder Action Segmentation Action & Relation Segmentation +10m parameters Relation Segmentation Tradeoff: Split Features vs Model Complexity

9 Proposed Model Structures
Split Complex Centroids Object Segmentation Encoder Decoder Action Segmentation Relation Segmentation Motivation: Object-centric action & relation detection Centroids from segmentation

10 Conclusion Current Challenges: Long training times: 2 days / model
Many models to train Long training times: 2 days / model Next Week: Training models Post-processing


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