Saral Shiksha Yojna
Courses/Computer Vision

Computer Vision

CSE471
Prof. Makarand Tapaswi + Prof. Charu SharmaSpring 2025-264 credits
Sample Papers/Mock Paper 14 — Comparison-Only ('X vs Y' / 'X vs Y vs Z')

Mock Paper 14 — Comparison-Only ('X vs Y' / 'X vs Y vs Z')

Duration: 150 min • Max marks: 100

Section A — Quick Comparisons (2 marks each, 40 marks)

40 marks
  1. 1.Erosion vs Dilation — one-line distinction.2 m
  2. 2.Opening vs Closing.2 m
  3. 3.Mean vs Median filter.2 m
  4. 4.Sobel vs Laplacian.2 m
  5. 5.DCT vs DFT for image compression.2 m
  6. 6.RGB vs HSV colour space.2 m
  7. 7.RGB vs Lab colour space.2 m
  8. 8.Histogram equalisation vs Gamma correction.2 m
  9. 9.Faster R-CNN RPN vs Selective Search.2 m
  10. 10.One-stage (YOLO) vs Two-stage (Faster R-CNN) detection.2 m
  11. 11.Anchor-based vs anchor-free detection.2 m
  12. 12.RoI Pool vs RoI Align.2 m
  13. 13.Semantic vs Instance vs Panoptic segmentation.2 m
  14. 14.FCN vs U-Net for segmentation.2 m
  15. 15.ResNet skip vs U-Net skip.2 m
  16. 16.BatchNorm vs LayerNorm.2 m
  17. 17.Pre-norm vs Post-norm Transformer.2 m
  18. 18.Self-attention vs Cross-attention.2 m
  19. 19.Absolute vs Relative vs Rotary positional encoding.2 m
  20. 20.CLIP vs SigLIP loss.2 m

Section B — Detailed Comparisons (5 marks each, 30 marks)

30 marks
  1. 1.SimCLR vs MoCo vs DINO — compare on (a) negatives, (b) projection head, (c) what stabilises training.5 m
  2. 2.Generative vs Discriminative representations — VAE vs MAE vs GAN vs Diffusion.5 m
  3. 3.PointNet vs PointNet++ vs DGCNN for point clouds.5 m
  4. 4.SGD vs SGD+Momentum vs Adam vs AdamW.5 m
  5. 5.NeRF vs 3D Gaussian Splatting.5 m
  6. 6.CLIP vs DINO vs MAE vs JEPA for downstream tasks.5 m

Section C — Synthesis Comparisons (10 marks each, 30 marks)

30 marks
  1. 1.Compare R-CNN, Fast R-CNN, Faster R-CNN, YOLO, DETR on: proposal mechanism, feature sharing, anchors, end-to-end, speed, strengths/weaknesses.10 m
  2. 2.Compare VGG, ResNet, Inception, MobileNet, EfficientNet, ViT, ConvNeXt as image-classification backbones.10 m
  3. 3.Compare PaliGemma, BLIP-2, LLaVA, Qwen2-VL, GPT-4V as VLMs.10 m

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