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Remove the rain in the input image/video by applying the derain methods based on convolutional neural networks. Training scripts as well as scripts for model generation are provided in the repository at https://github.com/XueweiMeng/derain_filter.git. Signed-off-by: Xuewei Meng <xwmeng96@gmail.com>
213 lines
6.7 KiB
C
213 lines
6.7 KiB
C
/*
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* Copyright (c) 2019 Xuewei Meng
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*
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* This file is part of FFmpeg.
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*
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* FFmpeg is free software; you can redistribute it and/or
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* modify it under the terms of the GNU Lesser General Public
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* License as published by the Free Software Foundation; either
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* version 2.1 of the License, or (at your option) any later version.
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*
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* FFmpeg is distributed in the hope that it will be useful,
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* but WITHOUT ANY WARRANTY; without even the implied warranty of
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* MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU
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* Lesser General Public License for more details.
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*
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* You should have received a copy of the GNU Lesser General Public
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* License along with FFmpeg; if not, write to the Free Software
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* Foundation, Inc., 51 Franklin Street, Fifth Floor, Boston, MA 02110-1301 USA
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*/
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/**
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* @file
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* Filter implementing image derain filter using deep convolutional networks.
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* http://openaccess.thecvf.com/content_ECCV_2018/html/Xia_Li_Recurrent_Squeeze-and-Excitation_Context_ECCV_2018_paper.html
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*/
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#include "libavformat/avio.h"
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#include "libavutil/opt.h"
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#include "avfilter.h"
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#include "dnn_interface.h"
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#include "formats.h"
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#include "internal.h"
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typedef struct DRContext {
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const AVClass *class;
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char *model_filename;
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DNNBackendType backend_type;
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DNNModule *dnn_module;
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DNNModel *model;
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DNNInputData input;
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DNNData output;
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} DRContext;
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#define CLIP(x, min, max) (x < min ? min : (x > max ? max : x))
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#define OFFSET(x) offsetof(DRContext, x)
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#define FLAGS AV_OPT_FLAG_FILTERING_PARAM | AV_OPT_FLAG_VIDEO_PARAM
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static const AVOption derain_options[] = {
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{ "dnn_backend", "DNN backend", OFFSET(backend_type), AV_OPT_TYPE_INT, { .i64 = 0 }, 0, 1, FLAGS, "backend" },
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{ "native", "native backend flag", 0, AV_OPT_TYPE_CONST, { .i64 = 0 }, 0, 0, FLAGS, "backend" },
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#if (CONFIG_LIBTENSORFLOW == 1)
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{ "tensorflow", "tensorflow backend flag", 0, AV_OPT_TYPE_CONST, { .i64 = 1 }, 0, 0, FLAGS, "backend" },
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#endif
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{ "model", "path to model file", OFFSET(model_filename), AV_OPT_TYPE_STRING, { .str = NULL }, 0, 0, FLAGS },
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{ NULL }
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};
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AVFILTER_DEFINE_CLASS(derain);
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static int query_formats(AVFilterContext *ctx)
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{
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AVFilterFormats *formats;
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const enum AVPixelFormat pixel_fmts[] = {
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AV_PIX_FMT_RGB24,
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AV_PIX_FMT_NONE
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};
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formats = ff_make_format_list(pixel_fmts);
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return ff_set_common_formats(ctx, formats);
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}
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static int config_inputs(AVFilterLink *inlink)
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{
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AVFilterContext *ctx = inlink->dst;
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DRContext *dr_context = ctx->priv;
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const char *model_output_name = "y";
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DNNReturnType result;
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dr_context->input.width = inlink->w;
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dr_context->input.height = inlink->h;
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dr_context->input.channels = 3;
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result = (dr_context->model->set_input_output)(dr_context->model->model, &dr_context->input, "x", &model_output_name, 1);
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if (result != DNN_SUCCESS) {
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av_log(ctx, AV_LOG_ERROR, "could not set input and output for the model\n");
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return AVERROR(EIO);
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}
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return 0;
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}
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static int filter_frame(AVFilterLink *inlink, AVFrame *in)
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{
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AVFilterContext *ctx = inlink->dst;
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AVFilterLink *outlink = ctx->outputs[0];
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DRContext *dr_context = ctx->priv;
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DNNReturnType dnn_result;
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int pad_size;
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AVFrame *out = ff_get_video_buffer(outlink, outlink->w, outlink->h);
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if (!out) {
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av_log(ctx, AV_LOG_ERROR, "could not allocate memory for output frame\n");
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av_frame_free(&in);
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return AVERROR(ENOMEM);
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}
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av_frame_copy_props(out, in);
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for (int i = 0; i < in->height; i++){
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for(int j = 0; j < in->width * 3; j++){
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int k = i * in->linesize[0] + j;
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int t = i * in->width * 3 + j;
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((float *)dr_context->input.data)[t] = in->data[0][k] / 255.0;
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}
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}
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dnn_result = (dr_context->dnn_module->execute_model)(dr_context->model, &dr_context->output, 1);
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if (dnn_result != DNN_SUCCESS){
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av_log(ctx, AV_LOG_ERROR, "failed to execute model\n");
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return AVERROR(EIO);
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}
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out->height = dr_context->output.height;
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out->width = dr_context->output.width;
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outlink->h = dr_context->output.height;
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outlink->w = dr_context->output.width;
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pad_size = (in->height - out->height) >> 1;
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for (int i = 0; i < out->height; i++){
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for(int j = 0; j < out->width * 3; j++){
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int k = i * out->linesize[0] + j;
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int t = i * out->width * 3 + j;
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int t_in = (i + pad_size) * in->width * 3 + j + pad_size * 3;
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out->data[0][k] = CLIP((int)((((float *)dr_context->input.data)[t_in] - dr_context->output.data[t]) * 255), 0, 255);
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}
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}
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av_frame_free(&in);
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return ff_filter_frame(outlink, out);
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}
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static av_cold int init(AVFilterContext *ctx)
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{
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DRContext *dr_context = ctx->priv;
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dr_context->input.dt = DNN_FLOAT;
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dr_context->dnn_module = ff_get_dnn_module(dr_context->backend_type);
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if (!dr_context->dnn_module) {
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av_log(ctx, AV_LOG_ERROR, "could not create DNN module for requested backend\n");
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return AVERROR(ENOMEM);
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}
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if (!dr_context->model_filename) {
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av_log(ctx, AV_LOG_ERROR, "model file for network is not specified\n");
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return AVERROR(EINVAL);
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}
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if (!dr_context->dnn_module->load_model) {
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av_log(ctx, AV_LOG_ERROR, "load_model for network is not specified\n");
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return AVERROR(EINVAL);
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}
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dr_context->model = (dr_context->dnn_module->load_model)(dr_context->model_filename);
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if (!dr_context->model) {
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av_log(ctx, AV_LOG_ERROR, "could not load DNN model\n");
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return AVERROR(EINVAL);
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}
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return 0;
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}
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static av_cold void uninit(AVFilterContext *ctx)
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{
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DRContext *dr_context = ctx->priv;
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if (dr_context->dnn_module) {
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(dr_context->dnn_module->free_model)(&dr_context->model);
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av_freep(&dr_context->dnn_module);
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}
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}
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static const AVFilterPad derain_inputs[] = {
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{
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.name = "default",
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.type = AVMEDIA_TYPE_VIDEO,
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.config_props = config_inputs,
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.filter_frame = filter_frame,
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},
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{ NULL }
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};
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static const AVFilterPad derain_outputs[] = {
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{
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.name = "default",
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.type = AVMEDIA_TYPE_VIDEO,
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},
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{ NULL }
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};
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AVFilter ff_vf_derain = {
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.name = "derain",
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.description = NULL_IF_CONFIG_SMALL("Apply derain filter to the input."),
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.priv_size = sizeof(DRContext),
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.init = init,
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.uninit = uninit,
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.query_formats = query_formats,
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.inputs = derain_inputs,
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.outputs = derain_outputs,
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.priv_class = &derain_class,
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.flags = AVFILTER_FLAG_SUPPORT_TIMELINE_GENERIC,
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};
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