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Dilated Convolution (or Atrous Convolution)

Convolution operation that inserts spaces between kernel elements, allowing for an increased receptive field without increasing the number of parameters or computational complexity.

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Dilation Rate

Parameter of dilated convolutions that defines the spacing between pixels in the convolution kernel, directly controlling the increase in receptive field.

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Encoder-Decoder with Atrous Convolution

DeepLabv3+ architecture that combines a powerful encoder (e.g., ResNet) with a simple and efficient decoder to refine segmentation predictions while preserving edge details.

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Output Stride

Ratio between the input image resolution and that of the final feature maps; DeepLab often uses an output stride of 16 or 8 to balance accuracy and speed.

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Image-Level Features

Global features extracted from the entire image, often via global pooling, and integrated into DeepLab's ASPP module to improve context class classification.

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DeepLabv1

First version of DeepLab that introduced the use of dilated convolutions in fully convolutional networks (FCN) for semantic segmentation, increasing the receptive field without loss of resolution.

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DeepLabv2

DeepLab version that integrated the Atrous Spatial Pyramid Pooling (ASPP) module to effectively capture multi-scale context, becoming a benchmark for semantic segmentation.

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DeepLabv3

Iteration that improved the ASPP module by adding global pooling and 1x1 convolutions, and explored the application of cascaded dilated convolutions for better performance.

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DeepLabv3+

Latest major version that adds a simple yet effective decoder to the DeepLabv3 architecture, refining segmentation predictions by merging low-level and high-level features.

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Fully Connected Conditional Random Field (CRF)

Post-processing method used in early versions of DeepLab to refine the edges of segmentation predictions by modeling relationships between all pixels in the image.

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Bilinear Interpolation Upsampling

Technique used in DeepLab to restore the spatial resolution of feature maps after dilated convolutions, in order to produce a segmentation map of the same size as the input image.

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Contextual Aggregation

Fundamental principle of DeepLab aimed at aggregating contextual information from different spatial scopes through dilated convolutions and the ASPP module for more robust prediction.

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