About 26 results
Open links in new tab
  1. What are deconvolutional layers? - Data Science Stack Exchange

    Jun 13, 2015 · Deconvolution layer is a very unfortunate name and should rather be called a transposed convolutional layer. Visually, for a transposed convolution with stride one and no …

  2. What is fractionally-strided convolution layer? - Data Science Stack ...

    Apr 15, 2019 · Also, here is asking "What are deconvolutional layers?" which is the same thing. And here are two quotes from on different types of convolutions: Transposed Convolutions …

  3. What is the difference between Dilated Convolution and …

    I believe the standard idea is to increase the amount of dilation moving forward, starting with undilated, regular filters for l=1, moving towards 2- and then 3-dilated filters and so on as you …

  4. How does strided deconvolution works? - Data Science Stack …

    Upsampling or deconvolution layer is used to increase the resolution of the image. In segmentation, we first downsample the image to get the features and then upsample the …

  5. Comparison of different ways of Upsampling in detection models

    Jan 16, 2021 · Deconvolution with stride in case it has learnable weights can do the increase of resolution in some priorly unknown way, with the trained weights, and seems to be a more …

  6. Deconvolution, NN-resize convolution - Data Science Stack …

    Both deconvolution and the different resize-convolution approaches are linear operations, and can be interpreted as matrices. To this explanation they add following image: How are the matrices …

  7. Adding bias in deconvolution (transposed convolution) layer

    How do we do this when applying the deconvolution layer? My confusion arises because my advisor told me to visualise upconvolution as a pseudo-inverse convolutional layer (inverse in …

  8. Deconvolution vs Sub-pixel Convolution - Data Science Stack …

    Dec 15, 2017 · I cannot understand the difference between deconvolution (mentioned in Section 2.1) and the Efficient sub-pixel convolution layer (ESCL for short) (Section 2.2) Section 2.2 …

  9. deep learning - What is deconvolution operation used in Fully ...

    What is deconvolution operation used in Fully Convolutional Neural Networks? Ask Question Asked 8 years, 4 months ago Modified 4 years, 9 months ago

  10. deep learning - I still don't know how deconvolution works after ...

    I still don't know how deconvolution works after watching CS231 lecture, I need help Ask Question Asked 7 years, 7 months ago Modified 7 years, 7 months ago