Segmentation-Aware Convolutional Networks Using Local Attention Masks

Related tags

Deep Learningsegaware
Overview

Segmentation-Aware Convolutional Networks Using Local Attention Masks

[Project Page] [Paper]

Segmentation-aware convolution filters are invariant to backgrounds. We achieve this in three steps: (i) compute segmentation cues for each pixel (i.e., “embeddings”), (ii) create a foreground mask for each patch, and (iii) combine the masks with convolution, so that the filters only process the local foreground in each image patch.

Installation

For prerequisites, refer to DeepLabV2. Our setup follows theirs almost exactly.

Once you have the prequisites, simply run make all -j4 from within caffe/ to compile the code with 4 cores.

Learning embeddings with dedicated loss

  • Use Convolution layers to create dense embeddings.
  • Use Im2dist to compute dense distance comparisons in an embedding map.
  • Use Im2parity to compute dense label comparisons in a label map.
  • Use DistLoss (with parameters alpha and beta) to set up a contrastive side loss on the distances.

See scripts/segaware/config/embs for a full example.

Setting up a segmentation-aware convolution layer

  • Use Im2col on the input, to arrange pixel/feature patches into columns.
  • Use Im2dist on the embeddings, to get their distances into columns.
  • Use Exp on the distances, with scale: -1, to get them into [0,1].
  • Tile the exponentiated distances, with a factor equal to the depth (i.e., channels) of the original convolution features.
  • Use Eltwise to multiply the Tile result with the Im2col result.
  • Use Convolution with bottom_is_im2col: true to matrix-multiply the convolution weights with the Eltwise output.

See scripts/segaware/config/vgg for an example in which every convolution layer in the VGG16 architecture is made segmentation-aware.

Using a segmentation-aware CRF

  • Use the NormConvMeanfield layer. As input, give it two copies of the unary potentials (produced by a Split layer), some embeddings, and a meshgrid-like input (produced by a DummyData layer with data_filler { type: "xy" }).

See scripts/segaware/config/res for an example in which a segmentation-aware CRF is added to a resnet architecture.

Replicating the segmentation results presented in our paper

  • Download pretrained model weights here, and put that file into scripts/segaware/model/res/.
  • From scripts, run ./test_res.sh. This will produce .mat files in scripts/segaware/features/res/voc_test/mycrf/.
  • From scripts, run ./gen_preds.sh. This will produce colorized .png results in scripts/segaware/results/res/voc_test/mycrf/none/results/VOC2012/Segmentation/comp6_test_cls. An example input-ouput pair is shown below:

- If you zip these results, and submit them to the official PASCAL VOC test server, you will get 79.83900% IOU.

If you run this set of steps for the validation set, you can run ./eval.sh to evaluate your results on the PASCAL VOC validation set. If you change the model, you may want to run ./edit_env.sh to update the evaluation instructions.

Citation

@inproceedings{harley_segaware,
  title = {Segmentation-Aware Convolutional Networks Using Local Attention Masks},
  author = {Adam W Harley, Konstantinos G. Derpanis, Iasonas Kokkinos},
  booktitle = {IEEE International Conference on Computer Vision (ICCV)},
  year = {2017},
}

Help

Feel free to open issues on here! Also, I'm pretty good with email: [email protected]

Real-time LIDAR-based Urban Road and Sidewalk detection for Autonomous Vehicles 🚗

urban_road_filter: a real-time LIDAR-based urban road and sidewalk detection algorithm for autonomous vehicles Dependency ROS (tested with Kinetic and

JKK - Vehicle Industry Research Center 180 Dec 12, 2022
Put blind watermark into a text with python

text_blind_watermark Put blind watermark into a text. Can be used in Wechat dingding ... How to Use install pip install text_blind_watermark Alice Pu

郭飞 164 Dec 30, 2022
Towards Interpretable Deep Metric Learning with Structural Matching

DIML Created by Wenliang Zhao*, Yongming Rao*, Ziyi Wang, Jiwen Lu, Jie Zhou This repository contains PyTorch implementation for paper Towards Interpr

Wenliang Zhao 75 Nov 11, 2022
Medical Insurance Cost Prediction using Machine earning

Medical-Insurance-Cost-Prediction-using-Machine-learning - Here in this project, I will use regression analysis to predict medical insurance cost for people in different regions, and based on several

1 Dec 27, 2021
The lightweight PyTorch wrapper for high-performance AI research. Scale your models, not the boilerplate.

The lightweight PyTorch wrapper for high-performance AI research. Scale your models, not the boilerplate. Website • Key Features • How To Use • Docs •

Pytorch Lightning 21.1k Dec 29, 2022
This repository contains the entire code for our work "Two-Timescale End-to-End Learning for Channel Acquisition and Hybrid Precoding"

Two-Timescale-DNN Two-Timescale End-to-End Learning for Channel Acquisition and Hybrid Precoding This repository contains the entire code for our work

QiyuHu 3 Mar 07, 2022
Code for the SIGIR 2022 paper "Hybrid Transformer with Multi-level Fusion for Multimodal Knowledge Graph Completion"

MKGFormer Code for the SIGIR 2022 paper "Hybrid Transformer with Multi-level Fusion for Multimodal Knowledge Graph Completion" Model Architecture Illu

ZJUNLP 68 Dec 28, 2022
RuleBERT: Teaching Soft Rules to Pre-Trained Language Models

RuleBERT: Teaching Soft Rules to Pre-Trained Language Models (Paper) (Slides) (Video) RuleBERT is a pre-trained language model that has been fine-tune

16 Aug 24, 2022
Semantic Scholar's Author Disambiguation Algorithm & Evaluation Suite

S2AND This repository provides access to the S2AND dataset and S2AND reference model described in the paper S2AND: A Benchmark and Evaluation System f

AI2 54 Nov 28, 2022
DABO: Data Augmentation with Bilevel Optimization

DABO: Data Augmentation with Bilevel Optimization [Paper] The goal is to automatically learn an efficient data augmentation regime for image classific

ElementAI 24 Aug 12, 2022
The Illinois repository for Climatehack (https://climatehack.ai/). We won 1st place!

Climatehack This is the repository for Illinois's Climatehack Team. We earned first place on the leaderboard with a final score of 0.87992. An overvie

Jatin Mathur 20 Jun 09, 2022
TPH-YOLOv5: Improved YOLOv5 Based on Transformer Prediction Head for Object Detection on Drone-Captured Scenarios

TPH-YOLOv5 This repo is the implementation of "TPH-YOLOv5: Improved YOLOv5 Based on Transformer Prediction Head for Object Detection on Drone-Captured

cv516Buaa 439 Dec 22, 2022
A object detecting neural network powered by the yolo architecture and leveraging the PyTorch framework and associated libraries.

Yolo-Powered-Detector A object detecting neural network powered by the yolo architecture and leveraging the PyTorch framework and associated libraries

Luke Wilson 1 Dec 03, 2021
A Simulated Optimal Intrusion Response Game

Optimal Intrusion Response An OpenAI Gym interface to a MDP/Markov Game model for optimal intrusion response of a realistic infrastructure simulated u

Kim Hammar 10 Dec 09, 2022
Implementation for paper "STAR: A Structure-aware Lightweight Transformer for Real-time Image Enhancement" (ICCV 2021).

STAR-pytorch Implementation for paper "STAR: A Structure-aware Lightweight Transformer for Real-time Image Enhancement" (ICCV 2021). CVF (pdf) STAR-DC

43 Dec 21, 2022
Type4Py: Deep Similarity Learning-Based Type Inference for Python

Type4Py: Deep Similarity Learning-Based Type Inference for Python This repository contains the implementation of Type4Py and instructions for re-produ

Software Analytics Lab 45 Dec 15, 2022
Pytorch Implementation of Google's Parallel Tacotron 2: A Non-Autoregressive Neural TTS Model with Differentiable Duration Modeling

Parallel Tacotron2 Pytorch Implementation of Google's Parallel Tacotron 2: A Non-Autoregressive Neural TTS Model with Differentiable Duration Modeling

Keon Lee 170 Dec 27, 2022
A program that can analyze videos according to the weights you select

MaskMonitor A program that can analyze videos according to the weights you select 下載 訓練完的 weight檔案 執行 MaskDetection.py 內部可更改 輸入來源(鏡頭, 影片, 圖片) 以及輸出條件(人

Patrick_star 1 Nov 07, 2021
Learning to Reach Goals via Iterated Supervised Learning

Vanilla GCSL This repository contains a vanilla implementation of "Learning to Reach Goals via Iterated Supervised Learning" proposed by Dibya Gosh et

Christoph Heindl 4 Aug 10, 2022
Codes for the AAAI'22 paper "TransZero: Attribute-guided Transformer for Zero-Shot Learning"

TransZero [arXiv] This repository contains the testing code for the paper "TransZero: Attribute-guided Transformer for Zero-Shot Learning" accepted to

Shiming Chen 52 Jan 01, 2023