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Questions tagged [convolution]

Convolution is a function-valued operation on two functions $f$ and $g$: $\int _{-\infty }^{\infty }f(\tau )g(t-\tau )d\tau$. Often used for obtaining the density of a sum of independent random variables. This tag should also be used for the inverse operation of deconvolution. DO NOT use this tag for convolutional neural networks.

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Convolution problem [closed]

If the sum of coefficients of a filter h is zero, then for what padding will the sum of elements of a resultant convolved image also be zero after performing convolution with an image f(m,n) ?
A_22_Romit Bhaumik's user avatar
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11 views

Why does convolutional neural network use a 2d Filter

Given an input of C,H,W where C is channels the filter is of size X,Y and slides across each channel individually. Why isn't the filter of size C,X,Y and slides across the entire 3d shape? I know of ...
Fine-Tuning's user avatar
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51 views

Deriving the pdf of noisy signal: sum of pdf f(s)=1/2+s/2 and a uniformly distributed noise [duplicate]

I am having a hard time to find the pdf of $\widetilde{s}=s+x$. $s$ has a pdf $f(s)=1/2+s/2$ where $s\in(-1,1)$. $x$ is uniformly distributed over $[-\epsilon, \epsilon]$. I am trying to use the ...
Fang Angel's user avatar
3 votes
1 answer
38 views

Sampling line segments within a box

I'm at a bit of a loss for where to start with a sampling problem I'm having so any and all direction would be helpful. I essentially want to sample line segments of identical length within a bounding ...
Brandan's user avatar
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4 votes
3 answers
343 views

Distribution after Combining Two Sets of Normal Distribution Samples

Suppose I draw $N1$ samples from distribution $N(\mu_1,\sigma_1^2)$, $N2$ samples from distribution $N(\mu_2,\sigma_2^2)$. These two distributions are independent. Can the combined sample of $N1+N2$ ...
CuteCat's user avatar
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0 answers
8 views

Positional Invariance missing after max pooling operation in custom CNN

I am an early career researcher in computational neuroscience, and I am currently trying to model a robust object recognition model. My model takes a dataset (binary images; where each object is ...
JayNeuro's user avatar
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21 views

the Detailed Architecture of EfficientNetV2-B2

I'm currently studying different neural network architectures and I'm particularly interested in EfficientNetV2-B2. I understand that this model is an improved version of the original EfficientNet, ...
WILLY WIJAYA's user avatar
1 vote
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26 views

How should I go about completely decorrelating a digital signal?

So I'm working on real time signal compression, and I need to come up with the best convolution to minimize the entropy of incoming data (which I will then compress), which I understand is achieved by ...
2 False's user avatar
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4 votes
1 answer
135 views

Uniform distribution over a triangle

Problem Consider a triangle $T$ with vertices $V_1,V_2,V_3 \in \mathbb{R}^2$ and let \begin{equation*}\begin{aligned} y&=z+v\\ v&\sim\mathcal{N}(0, R)\\ z&\sim\mathcal{U}(T) \end{aligned}\...
matteogost's user avatar
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40 views

Uniform density over 2 segments [duplicate]

Background Let $V_1, V_2 \in \mathbb{R}^2$ be the vertices of a segment and let $z$ be uniformly distributed over that segment. Now consider the random vector \begin{equation*} \begin{aligned} y&=...
matteogost's user avatar
3 votes
1 answer
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Convolution with a pathological distribution

Problem definition Consider the following random bivariate vector \begin{equation} \begin{aligned} y&=z+v \\ z&\sim p_z(z;c) \\ v&\sim p_v(v) \end{aligned} \end{equation} where $p_z$ ...
matteogost's user avatar
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Why does GAP at the end of FCN for MTSC work?

I have a binary MTSC (Multivariate Time Series Classification) problem where i train a CNN, namely a FCN (or Fully Convolutional Network) to predict class 0 or class 1 based on a multivariate time ...
davva's user avatar
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1 vote
1 answer
51 views

Percentiles of a distribution of weighted summary statistics

Suppose I have a collection of different independent probability distributions, $\{ P_i(X)\}_{i=1}^N$, each with their own support $I_i$. I know that the $10^{th}$ percentile of a given distribution ...
David G.'s user avatar
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What is the variance of convolution of two random variables?

Consider two random variables $Z$ and $W$. Given the variances of $Z$ and $W$, how can we compute the variance of their convolution $Z \circledast W $? As an example, please consider the case of noise ...
user409495's user avatar
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PDF of difference of uniform distributions [duplicate]

Main questions are in bold but feel free to correct me if I'm wrong somewhere else. As far as possible, I need both intuition and formal explanation. Let $X \sim Uniform(a,b)$ and $Y \sim Uniform(c,d)$...
White1Hun's user avatar
25 votes
4 answers
2k views

Probability that sum of binary variables is even

Let $S_i \in \{0,1\}$, $i=1,\dots,N$ be $N$ independent random binary variables, each taking the value 1 with probability $0 \le p_i \le 1$ (and the value 0 with probability $1-p_i$). I am interested ...
a06e's user avatar
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What is the distribution of a RV with the constant random variable? [duplicate]

For random variables (rv) $X$ and $Y$ on a space $\Omega$: Assume the rv $X\sim f_0$ distributed and $Y(t)=c$ is a constant rv, i.e. $Y\sim \delta(t-c)$ using the $\delta$-distribution as a short ...
Christoph's user avatar
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Why is the maximum path length for convolutional layer $O(n/k)$ in attention is all you need paper?

In the table-1 third row it is being mentioned. Why is it $O(n/k)$? Take for example 1d convolution of 2 over 9 tokens with stride $1$. It won't be $n/k$ or $9/2=4.5$ rather it would be roughly $n-1$ ...
user404316's user avatar
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Inference on latent variable with observation of its convolution with itself

Problem I have an inference problem where the data observed are univariate random numbers whose distribution is obtained as follows. A latent random variable X is first sampled from a parametric ...
Riccardo Buscicchio's user avatar
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0 answers
43 views

Weighted Average of Uniformly Distributed RV [duplicate]

Let $x \sim U[0,1]$ and $y\sim U[0,1]$. Let $z= \omega\, x+ (1-\omega)\,y$, where $\omega\in[0,1]$. The pdf of $z$ is a trapezoidal distribution over $[0,1]$: \begin{equation*} \begin{aligned} f(z)&...
Philipponat's user avatar
1 vote
1 answer
113 views

Convolutional Neural Networks - Flattening with multiple feature maps

I have a very simple question about CNNs, which I unfortunately couldn't find an explanation for. Imagine we have a CNN, that has four filters (eg right, left, top, bottom edges) each of those outputs ...
Michal Gally's user avatar
3 votes
1 answer
142 views

How to obtain the last convolutional layer of a model in torchvision for applying grad cam?

I'm using efficient net b0 from torchvision for training a classifier for cifar10. I would like to apply grad cam for generating saliency maps for explaining the predictions. However, I'm not sure ...
Zaratruta's user avatar
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0 answers
23 views

Computing an integral that reduces to $\mathbb{P}[X>Y]$

Problem Evaluate $$I=\int_{-\infty}^\infty \frac{e^{-\frac{1}{2}\left(\frac{x-\mu)}{\sigma} \right)^2}}{\sigma \sqrt{2 \pi}}\frac{1}{1+e^{-x}}\, \mathrm{d}x$$ My attempt Now the first part of the ...
Bhoris Dhanjal's user avatar
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0 answers
22 views

Exact Successor State Distribution for a Pendulum

I want to solve the following problem. Suppose we have a simple pendulum, which follows the differential equation \begin{equation} \dot{x} = f(x) = [x_2, -\sin(x_1)]^T, \text{with } x=[x_1, x_2]^T. \...
Looper's user avatar
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2 votes
1 answer
41 views

No activation function between two convolutional layers in MUNIT?

I'm reading the code of NVIDIA's MUNIT, the code of the resnet is as follows: ...
James's user avatar
  • 21
1 vote
1 answer
205 views

Is it wrong to view convolution as template matching?

I am reading about the convolution operation but I can't see how it can be seen as template matching. Suppose that we convolve the input $\mathbf{X}$: $$ \begin{bmatrix} 1 & 0 & 0 & 0 \\ 0 ...
ado sar's user avatar
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2 votes
1 answer
278 views

Why convolving a function with a Gaussian kernel is the same as adding a Gaussian noise to the input? [duplicate]

I am implementing accelerated Langevin Dynamics (LD) for posterior estimation with prior presented with deep autoregressive network from paper [1]. I have a question about the prior smoothing ...
ane4ka's user avatar
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3 votes
1 answer
149 views

Probability Density of the Sum of Two Un-identical Uniform Random Variables

Let $X$ ~ Uniform$[a,b]$ and $Y$ ~ Uniform$[c,d],$ where $a\le b\le c\le d.$ Find the probability density of $Z = X + Y.$ I know I have to use the convolution formula $$f_Z(z) = \int_{-\infty}^\...
mathboyexpert1010's user avatar
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0 answers
24 views

Cannot apply simple OLS model in the case of low resolution devices resulting in Fourier space convolution

There's a problem which often comes up within my field and doesn't seem to be approachable analytically. Any suggestions or direction towards the class of problems this falls under would be helpful. ...
Seb's user avatar
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1 vote
1 answer
184 views

When is a conditional hazard rate increasing?

Cross posted from Mathoverflow Let $X$ and $Y$ be two random variables such that $X\sim Exp(\lambda)$ and $Y$ have positive support and (strictly) increasing hazard rate $h_Y$. $X$ and $Y$ are ...
Robin_oud's user avatar
3 votes
2 answers
134 views

Convolution of two functions doesn't fit my data as I thought it would

I have simulated a Gaussian curve in 50 bins of data. I have then repeated this many times, drawing the amplitude of the Gaussian from a log-normal distribution. Here are a 10 realizations: (IMAGE 1) ...
user1551817's user avatar
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2 votes
0 answers
50 views

Estimating the distribution of a sum of two random variables if the family of one of the variables is known

Assume I have a random variable $Y=X_1+X_2$. I want to estimate the distribution $f$ of $Y$ given a sample $y_1,\ldots,y_N$. If this was all that is known about $Y$ the best way would probably be to ...
LiKao's user avatar
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2 votes
0 answers
127 views

Calculating convolution in R [closed]

I am struggling to get the correct answer for the simple calculation of convolution in R. The convolution of $f(t) = e^{-t}$ and $g(t) = \sin(t)$ is: $$ (f * g)(t) = 1/2 \left( e^{-t} + \sin(t) - \cos(...
s5s's user avatar
  • 685
0 votes
1 answer
182 views

How to backpropagate transposed convolution?

I'm currently learning Convolutional Neural Networks and am stuck on trying to figure out how to compute gradients in a layer that uses transposed convolution. Also, how do I calculate the gradients ...
Jakob's user avatar
  • 1
3 votes
4 answers
668 views

Probability of a given result with multiples of mixed dice with different number of faces

What is the formula to calculate the probability of getting 41 when I throw two 10-sided dice and four 8-sided dice? I’m looking for an algorithm for the general case of throwing multiples of two sets ...
Cel's user avatar
  • 275
3 votes
2 answers
369 views

Calculating the distribution of $X-Y$

One can find the distribution of $X+Y$ where $X$ and $Y$ are independent random variables using this formula $$f_{X+Y}(a)=\int_{-\infty}^\infty f_X(a-y) f_Y(y) dy$$ I'm wondering how to adapt this ...
John Davies's user avatar
5 votes
1 answer
84 views

what are the differences between receptive field (RF) and field-of-views (FOV) in DeepLab papers?

I am learning the deeplab models. However, some concepts in the papers made me confused. Receptive field (RF) and field-of-views (FOV) are two concepts mentioned in the Deeplabv1 paper. I know that ...
kevin lee's user avatar
  • 311
9 votes
3 answers
375 views

Density of $|t_1 - t_2|$ where $t_1$ and $t_2$ are iid with $P(t) = \alpha e^{-t\alpha}$

I am trying to answer the following question from my quantum mechanics textbook and my probability theory is admittedly rusty (this is not schoolwork as should be clear from my post history on Phys ...
EE18's user avatar
  • 203
1 vote
0 answers
70 views

Order Statistics - Percentile Range of Normal Mixture of Normals

Say I have draw N values from a normal distribution [$\mu_1$, $\sigma_1$]. Below are 10 sampled points compared to the normal distribution they're sampled from I then create a normal mixture of ...
Hunty2312's user avatar
3 votes
0 answers
118 views

Distribution closed under convolution and truncation followed by convolution

Let $D(\theta)$ denote an absolutely continuous distribution on $\mathbb{R}$. (The finite dimensional vector $\theta$ collects the parameters of the distribution.) Assume that the p.d.f. of $D(\theta)$...
cfp's user avatar
  • 525
1 vote
1 answer
216 views

How can I build a 6D Convolution Layer in a CNN, using R or Python? [closed]

As stated in the title, I would like to build an N-dimensional Convolutional Layer as part of a Convolution Neural Network, without doing dimensionality reduction on my data; because I have multiple ...
David's user avatar
  • 113
0 votes
0 answers
26 views

Unclear Architecture of MNIST Neural Network

I am trying to reproduce a Neural Network trained to detect whether there is a 0-3 digit in an image with another confounding image. The paper I am following lists the corresponding architecture: A ...
Hustler885's user avatar
1 vote
1 answer
93 views

What "Convolution filters along the time axis" means?

Suppose that I have a tensor of height:25 and width:50. Height is my temporal axis, therefore I have a window of 25 time steps. Therefore my input tensor is: I want to extract temporal features / ...
Mas A's user avatar
  • 233
1 vote
0 answers
42 views

Relationship between convolutions in neural nets and probabilistic convolution

In probability theory, convolution extends to produce the distribution of the sum of two independent random variables. I've only ever seen this in the context of univariate random variables. However, ...
Victor M's user avatar
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1 vote
0 answers
14 views

Are Class Activated Maps an example of backpropagated Explainable AI?

Class Activated Maps (NOT GradCAM) is listed in van der Velden et al as a back-propagation approach in table 1, but that is not actually true, is it? CAM doesn't use back-propagation in the method, ...
Stani Petrov's user avatar
1 vote
0 answers
23 views

How to calculate how much each error source contributes to an overall accuracy metric?

I am building a model of overall accuracy for a robotic system, I have various error sources from assembly, calibrations, measurements, imaging, for each error I have a PDF of the error it induces on ...
MedicalClown's user avatar
0 votes
2 answers
114 views

How to average multiple non-normal distributions?

I have the following statistics of two independent random variables: First random variable: ...
Hossein's user avatar
  • 39
1 vote
0 answers
42 views

Mean conditional on sum

Let $X$ and $Y$ be two random variables. I am interested in how $\mathrm{E}[X | X + Y = z]$ changes as $z$ changes. Intuitively, if $X$ and $Y$ are independent, the conditional mean should be ...
user36357's user avatar
4 votes
3 answers
4k views

How to determine the no of multiplication operations in convolution operation?

Let's say We have an input of size 28×28×192. We apply 32, 5×5 convolution filters with padding "same". How many multiplication operations will be there in total? I know there will be ...
Sushil Khadka's user avatar
0 votes
0 answers
68 views

How to take 1000 samples from distribution X and then use MLE to prove they came from distribution X?

I am trying to do: find 1000 points that represent samples from distribution X with parameters $(a,b,c,\ldots, d)$ be guaranteed that the MLEs for those 1000 points are $(a,b,c,\ldots, d)$ with $99\%$...
Alexander Mills's user avatar

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