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Computer Vision Interview
20 essential Q&A
Updated 2026
filtering
Image Filtering: 20 Essential Q&A
Linear filtering, convolution vs correlation, blur types, and how kernels tie to low-pass and high-pass ideas.
~11 min read
20 questions
Beginner–Intermediate
convolutionGaussianmedianpadding
Quick Navigation
1. What is image filtering?
2. Convolution definition
3. Correlation vs convolution
4. Kernel / mask
5. Linear vs nonlinear filters
6. Gaussian filter
7. Separable Gaussian
2. Convolution definition
3. Correlation vs convolution
4. Kernel / mask
5. Linear vs nonlinear filters
6. Gaussian filter
7. Separable Gaussian
1
What is image filtering?
⚡ easy
Answer: Computing a new image where each output pixel is a function of a neighborhood of input pixels. Linear filters use weighted sums (convolution/correlation); nonlinear filters include median, bilateral, morphological ops.
2
Define 2D convolution (discrete).
📊 medium
Answer: Slide a kernel over the image; at each location, sum of elementwise products of kernel and flipped neighborhood (strict convolution). Many libraries implement cross-correlation without flip—know which convention your framework uses.
3
Correlation vs convolution for symmetric kernels?
📊 medium
Answer: For symmetric kernels (Gaussian), results match. For asymmetric kernels (Sobel direction), flip matters for strict signal-processing convolution vs correlation.
4
What is a kernel / mask?
⚡ easy
Answer: Small matrix of weights defining neighborhood contributions. Size (e.g. 3×3, 5×5) sets spatial support; larger kernels increase blur radius and compute cost (~kernel area per pixel).
5
Examples of nonlinear filters?
⚡ easy
Answer: Median (order-statistic, good for salt-and-pepper), bilateral (edge-preserving smoothing), morphology (min/max). They do not obey superposition like convolutions.
6
Why use a Gaussian kernel?
📊 medium
Answer: Smooth low-pass filtering that reduces noise and high frequencies while avoiding sharp ringing like ideal low-pass. Separable implementation makes it fast; σ controls blur strength.
import cv2
blur = cv2.GaussianBlur(img, (5, 5), sigmaX=1.0)
7
What does separable filter mean?
🔥 hard
Answer: A 2D kernel K can equal outer product v vᵀ. Convolving with K is equivalent to 1D conv along rows then columns—cost drops from O(WHk²) to O(2WHk) for k×k support.
8
Mean / box filter properties?
⚡ easy
Answer: Simple average of neighborhood—fast (especially with integral images) but has a sharp frequency nulls profile vs Gaussian; can create blocky artifacts compared to Gaussian blur.
9
When prefer median filtering?
📊 medium
Answer: Impulsive salt-and-pepper noise where mean blur smears outliers. Median preserves edges better than Gaussian for that noise but is costlier and can remove thin structures.
10
Intuition for bilateral filter?
🔥 hard
Answer: Weighted average where weights drop with both spatial distance and intensity difference—smooths flat regions but preserves sharp edges. Used for denoising and tone mapping; slower than Gaussian.
11
What is padding in convolution?
📊 medium
Answer: Extends the image border so output size can match input (same padding) or follow strict convolution (valid). Modes: zero, reflect, replicate, wrap—choice affects edges and CNN behavior.
12
Why do edges look different after filtering?
⚡ easy
Answer: Neighborhoods at borders are incomplete; padding synthesizes missing neighbors. Wrong padding can cause dark/bright fringes—noticeable on small images and CNN feature maps.
13
Basic sharpening idea?
📊 medium
Answer: Emphasize high frequencies by adding a scaled Laplacian-like response or subtracting a blurred version from the original—makes edges pop but can amplify noise.
14
What is unsharp masking?
📊 medium
Answer: Enhancement: original + amount × (original − blurred). The difference is a high-boost of details; used in photography and preprocessing (with care for noise).
15
How is CNN stride related to classical filtering?
📊 medium
Answer: Stride >1 subsamples the output—like convolve-then-downsample. Larger stride increases receptive field progression and reduces spatial size; different from stride-1 spatial filtering used in preprocessing.
16
Frequency view of Gaussian blur?
🔥 hard
Answer: Gaussian in space ↔ Gaussian in frequency; it attenuates high frequencies smoothly. Helps before subsampling to limit aliasing (Nyquist)—ties back to image basics.
17
Gaussian noise vs salt-and-pepper—filter choice?
📊 medium
Answer: Gaussian noise: linear smoothing (Gaussian blur) or Wiener/BM3D-class methods at higher level. Salt-and-pepper: median or morphological openings/closings.
18
How do derivative filters relate to filtering?
📊 medium
Answer: Finite differences (Sobel/Prewitt) are short convolution kernels approximating gradients—high-pass. Often paired with prior Gaussian smoothing to reduce noise before edge detection.
19
Why normalize blur kernels?
⚡ easy
Answer: So the DC gain is 1—preserves average brightness. Unnormalized Gaussian sums to 1 after discretization normalization; forgetting normalization scales image intensity.
20
OpenCV:
GaussianBlur vs filter2D?
⚡ easy
Answer: GaussianBlur builds separable Gaussian internally. filter2D applies arbitrary kernel (correlation-style in OpenCV)—flexible for custom linear filters.
Filtering Cheat Sheet
Linear
- Convolution / correlation
- Gaussian low-pass
- Separability
Nonlinear
- Median (impulse noise)
- Bilateral (edge-aware)
- Morphology (later topic)
CNN tie-in
- Learned kernels
- Padding & stride
- Depthwise convs
💡 Pro tip: Mention separability + complexity when discussing large Gaussian kernels.
Full tutorial track
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