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import torch
import torch.nn as nn
import time


eps = 1e-8


def sinkhorn(M, r, c, iteration):
    p = torch.softmax(M, dim=-1)
    u = torch.ones_like(r)
    v = torch.ones_like(c)
    for _ in range(iteration):
        u = r / ((p * v.unsqueeze(-2)).sum(-1) + eps)
        v = c / ((p * u.unsqueeze(-1)).sum(-2) + eps)
    p = p * u.unsqueeze(-1) * v.unsqueeze(-2)
    return p


def sink_algorithm(M, dustbin, iteration):
    M = torch.cat([M, dustbin.expand([M.shape[0], M.shape[1], 1])], dim=-1)
    M = torch.cat([M, dustbin.expand([M.shape[0], 1, M.shape[2]])], dim=-2)
    r = torch.ones([M.shape[0], M.shape[1] - 1], device="cuda")
    r = torch.cat([r, torch.ones([M.shape[0], 1], device="cuda") * M.shape[1]], dim=-1)
    c = torch.ones([M.shape[0], M.shape[2] - 1], device="cuda")
    c = torch.cat([c, torch.ones([M.shape[0], 1], device="cuda") * M.shape[2]], dim=-1)
    p = sinkhorn(M, r, c, iteration)
    return p


class attention_block(nn.Module):
    def __init__(self, channels, head, type):
        assert type == "self" or type == "cross", "invalid attention type"
        nn.Module.__init__(self)
        self.head = head
        self.type = type
        self.head_dim = channels // head
        self.query_filter = nn.Conv1d(channels, channels, kernel_size=1)
        self.key_filter = nn.Conv1d(channels, channels, kernel_size=1)
        self.value_filter = nn.Conv1d(channels, channels, kernel_size=1)
        self.attention_filter = nn.Sequential(
            nn.Conv1d(2 * channels, 2 * channels, kernel_size=1),
            nn.SyncBatchNorm(2 * channels),
            nn.ReLU(),
            nn.Conv1d(2 * channels, channels, kernel_size=1),
        )
        self.mh_filter = nn.Conv1d(channels, channels, kernel_size=1)

    def forward(self, fea1, fea2):
        batch_size, n, m = fea1.shape[0], fea1.shape[2], fea2.shape[2]
        query1, key1, value1 = (
            self.query_filter(fea1).view(batch_size, self.head_dim, self.head, -1),
            self.key_filter(fea1).view(batch_size, self.head_dim, self.head, -1),
            self.value_filter(fea1).view(batch_size, self.head_dim, self.head, -1),
        )
        query2, key2, value2 = (
            self.query_filter(fea2).view(batch_size, self.head_dim, self.head, -1),
            self.key_filter(fea2).view(batch_size, self.head_dim, self.head, -1),
            self.value_filter(fea2).view(batch_size, self.head_dim, self.head, -1),
        )
        if self.type == "self":
            score1, score2 = torch.softmax(
                torch.einsum("bdhn,bdhm->bhnm", query1, key1) / self.head_dim**0.5,
                dim=-1,
            ), torch.softmax(
                torch.einsum("bdhn,bdhm->bhnm", query2, key2) / self.head_dim**0.5,
                dim=-1,
            )
            add_value1, add_value2 = torch.einsum(
                "bhnm,bdhm->bdhn", score1, value1
            ), torch.einsum("bhnm,bdhm->bdhn", score2, value2)
        else:
            score1, score2 = torch.softmax(
                torch.einsum("bdhn,bdhm->bhnm", query1, key2) / self.head_dim**0.5,
                dim=-1,
            ), torch.softmax(
                torch.einsum("bdhn,bdhm->bhnm", query2, key1) / self.head_dim**0.5,
                dim=-1,
            )
            add_value1, add_value2 = torch.einsum(
                "bhnm,bdhm->bdhn", score1, value2
            ), torch.einsum("bhnm,bdhm->bdhn", score2, value1)
        add_value1, add_value2 = self.mh_filter(
            add_value1.contiguous().view(batch_size, self.head * self.head_dim, n)
        ), self.mh_filter(
            add_value2.contiguous().view(batch_size, self.head * self.head_dim, m)
        )
        fea11, fea22 = torch.cat([fea1, add_value1], dim=1), torch.cat(
            [fea2, add_value2], dim=1
        )
        fea1, fea2 = fea1 + self.attention_filter(fea11), fea2 + self.attention_filter(
            fea22
        )

        return fea1, fea2


class matcher(nn.Module):
    def __init__(self, config):
        nn.Module.__init__(self)
        self.use_score_encoding = config.use_score_encoding
        self.layer_num = config.layer_num
        self.sink_iter = config.sink_iter
        self.position_encoder = nn.Sequential(
            nn.Conv1d(3, 32, kernel_size=1)
            if config.use_score_encoding
            else nn.Conv1d(2, 32, kernel_size=1),
            nn.SyncBatchNorm(32),
            nn.ReLU(),
            nn.Conv1d(32, 64, kernel_size=1),
            nn.SyncBatchNorm(64),
            nn.ReLU(),
            nn.Conv1d(64, 128, kernel_size=1),
            nn.SyncBatchNorm(128),
            nn.ReLU(),
            nn.Conv1d(128, 256, kernel_size=1),
            nn.SyncBatchNorm(256),
            nn.ReLU(),
            nn.Conv1d(256, config.net_channels, kernel_size=1),
        )

        self.dustbin = nn.Parameter(torch.tensor(1, dtype=torch.float32, device="cuda"))
        self.self_attention_block = nn.Sequential(
            *[
                attention_block(config.net_channels, config.head, "self")
                for _ in range(config.layer_num)
            ]
        )
        self.cross_attention_block = nn.Sequential(
            *[
                attention_block(config.net_channels, config.head, "cross")
                for _ in range(config.layer_num)
            ]
        )
        self.final_project = nn.Conv1d(
            config.net_channels, config.net_channels, kernel_size=1
        )

    def forward(self, data, test_mode=True):
        desc1, desc2 = data["desc1"], data["desc2"]
        desc1, desc2 = torch.nn.functional.normalize(
            desc1, dim=-1
        ), torch.nn.functional.normalize(desc2, dim=-1)
        desc1, desc2 = desc1.transpose(1, 2), desc2.transpose(1, 2)
        if test_mode:
            encode_x1, encode_x2 = data["x1"], data["x2"]
        else:
            encode_x1, encode_x2 = data["aug_x1"], data["aug_x2"]
        if not self.use_score_encoding:
            encode_x1, encode_x2 = encode_x1[:, :, :2], encode_x2[:, :, :2]

        encode_x1, encode_x2 = encode_x1.transpose(1, 2), encode_x2.transpose(1, 2)

        x1_pos_embedding, x2_pos_embedding = self.position_encoder(
            encode_x1
        ), self.position_encoder(encode_x2)
        aug_desc1, aug_desc2 = x1_pos_embedding + desc1, x2_pos_embedding + desc2
        for i in range(self.layer_num):
            aug_desc1, aug_desc2 = self.self_attention_block[i](aug_desc1, aug_desc2)
            aug_desc1, aug_desc2 = self.cross_attention_block[i](aug_desc1, aug_desc2)

        aug_desc1, aug_desc2 = self.final_project(aug_desc1), self.final_project(
            aug_desc2
        )
        desc_mat = torch.matmul(aug_desc1.transpose(1, 2), aug_desc2)
        p = sink_algorithm(desc_mat, self.dustbin, self.sink_iter[0])
        return {"p": p}