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import os, sys, argparse
from copy import deepcopy
import numpy as np
import torch
from evaluation.utils_3d import get_instances

parser = argparse.ArgumentParser()
parser.add_argument('--pred_path', required=True, help='path to directory of predicted .txt files')
parser.add_argument('--gt_path', required=True, help='path to directory of ground truth .txt files')
parser.add_argument('--dataset', required=True, help='type of dataset, e.g. matterport3d, scannet, etc.')
parser.add_argument('--output_file', default='', help='path to output file')
parser.add_argument('--no_class', action='store_true', help='class agnostic evaluation')
opt = parser.parse_args()

# ---------- Label info ---------- #
from evaluation.constants import MATTERPORT_LABELS, MATTERPORT_IDS, SCANNET_LABELS, SCANNET_IDS, SCANNETPP_LABELS, SCANNETPP_IDS

if opt.dataset == 'matterport3d':
    CLASS_LABELS = MATTERPORT_LABELS
    VALID_CLASS_IDS = MATTERPORT_IDS
elif opt.dataset == 'scannet':
    CLASS_LABELS = SCANNET_LABELS
    VALID_CLASS_IDS = SCANNET_IDS
elif opt.dataset == 'scannetpp':
    CLASS_LABELS = SCANNETPP_LABELS
    VALID_CLASS_IDS = SCANNETPP_IDS


if opt.output_file == '':
    opt.output_file = os.path.join(f'data/evaluation/{opt.dataset}', opt.pred_path.split('/')[-1] + '.txt')
    os.makedirs(os.path.dirname(opt.output_file), exist_ok=True)
if opt.no_class:
    if 'class_agnostic' not in opt.output_file:
        opt.output_file = opt.output_file.replace('.txt', '_class_agnostic.txt')

ID_TO_LABEL = {}
LABEL_TO_ID = {}
for i in range(len(VALID_CLASS_IDS)):
    LABEL_TO_ID[CLASS_LABELS[i]] = VALID_CLASS_IDS[i]
    ID_TO_LABEL[VALID_CLASS_IDS[i]] = CLASS_LABELS[i]

# ---------- Evaluation params ---------- #
# overlaps for evaluation
opt.overlaps             = np.append(np.arange(0.5,0.95,0.05), 0.25)
# minimum region size for evaluation [verts]
opt.min_region_sizes     = np.array( [ 100 ] )
# distance thresholds [m]
opt.distance_threshes    = np.array( [  float('inf') ] )
# distance confidences
opt.distance_confs       = np.array( [ -float('inf') ] )


def evaluate_matches(matches):
    overlaps = opt.overlaps
    min_region_sizes = [ opt.min_region_sizes[0] ]
    dist_threshes = [ opt.distance_threshes[0] ]
    dist_confs = [ opt.distance_confs[0] ]
    
    # results: class x overlap
    ap = np.zeros( (len(dist_threshes) , len(CLASS_LABELS) , len(overlaps)) , float )
    for di, (min_region_size, distance_thresh, distance_conf) in enumerate(zip(min_region_sizes, dist_threshes, dist_confs)):
        for oi, overlap_th in enumerate(overlaps):
            pred_visited = {}
            for m in matches:
                for p in matches[m]['pred']:
                    for label_name in CLASS_LABELS:
                        for p in matches[m]['pred'][label_name]:
                            if 'filename' in p:
                                pred_visited[p['filename']] = False
            for li, label_name in enumerate(CLASS_LABELS):
                y_true = np.empty(0)
                y_score = np.empty(0)
                hard_false_negatives = 0
                has_gt = False
                has_pred = False
                for m in matches:
                    pred_instances = matches[m]['pred'][label_name]
                    gt_instances = matches[m]['gt'][label_name]
                    # filter groups in ground truth
                    gt_instances = [ gt for gt in gt_instances if gt['instance_id']>=1000 and gt['vert_count']>=min_region_size and gt['med_dist']<=distance_thresh and gt['dist_conf']>=distance_conf ]
                    if gt_instances:
                        has_gt = True
                    if pred_instances:
                        has_pred = True

                    cur_true  = np.ones ( len(gt_instances) )
                    cur_score = np.ones ( len(gt_instances) ) * (-float("inf"))
                    cur_match = np.zeros( len(gt_instances) , dtype=bool )
                    # collect matches
                    for (gti,gt) in enumerate(gt_instances):
                        found_match = False
                        num_pred = len(gt['matched_pred'])
                        for pred in gt['matched_pred']:
                            # greedy assignments
                            if pred_visited[pred['filename']]:
                                continue
                            overlap = float(pred['intersection']) / (gt['vert_count']+pred['vert_count']-pred['intersection'])
                            if overlap > overlap_th:
                                confidence = pred['confidence']
                                # if already have a prediction for this gt,
                                # the prediction with the lower score is automatically a false positive
                                if cur_match[gti]:
                                    max_score = max( cur_score[gti] , confidence )
                                    min_score = min( cur_score[gti] , confidence )
                                    cur_score[gti] = max_score
                                    # append false positive
                                    cur_true  = np.append(cur_true,0)
                                    cur_score = np.append(cur_score,min_score)
                                    cur_match = np.append(cur_match,True)
                                # otherwise set score
                                else:
                                    found_match = True
                                    cur_match[gti] = True
                                    cur_score[gti] = confidence
                                    pred_visited[pred['filename']] = True
                                

                        if not found_match:
                            hard_false_negatives += 1
                    # remove non-matched ground truth instances
                    cur_true  = cur_true [ cur_match==True ]
                    cur_score = cur_score[ cur_match==True ]

                    # collect non-matched predictions as false positive
                    for pred in pred_instances:
                        found_gt = False
                        for gt in pred['matched_gt']:
                            overlap = float(gt['intersection']) / (gt['vert_count']+pred['vert_count']-gt['intersection'])
                            if overlap > overlap_th:
                                found_gt = True
                                break
                        if not found_gt:
                            num_ignore = pred['void_intersection']
                            for gt in pred['matched_gt']:
                                # group?
                                if gt['instance_id'] < 1000:
                                    num_ignore += gt['intersection']
                                # small ground truth instances
                                if gt['vert_count'] < min_region_size or gt['med_dist']>distance_thresh or gt['dist_conf']<distance_conf:
                                    num_ignore += gt['intersection']
                            proportion_ignore = float(num_ignore)/pred['vert_count']
                            # if not ignored append false positive
                            if proportion_ignore <= overlap_th:
                                cur_true = np.append(cur_true,0)
                                confidence = pred["confidence"]
                                cur_score = np.append(cur_score,confidence)
                    # append to overall results
                    y_true  = np.append(y_true,cur_true)
                    y_score = np.append(y_score,cur_score)
                
                # compute average precision
                if has_gt and has_pred:
                    if len(y_score) == 0:
                        ap_current = 0.0
                    else:
                        # compute precision recall curve first

                        # sorting and cumsum
                        score_arg_sort      = np.argsort(y_score)
                        y_score_sorted      = y_score[score_arg_sort]
                        y_true_sorted       = y_true[score_arg_sort]
                        y_true_sorted_cumsum = np.cumsum(y_true_sorted)

                        # unique thresholds
                        (thresholds,unique_indices) = np.unique( y_score_sorted , return_index=True )
                        num_prec_recall = len(unique_indices) + 1

                        # prepare precision recall
                        num_examples      = len(y_score_sorted)
                        num_true_examples = y_true_sorted_cumsum[-1]
                        precision         = np.zeros(num_prec_recall)
                        recall            = np.zeros(num_prec_recall)

                        # deal with the first point
                        y_true_sorted_cumsum = np.append( y_true_sorted_cumsum , 0 )
                        # deal with remaining
                        for idx_res,idx_scores in enumerate(unique_indices):
                            cumsum = y_true_sorted_cumsum[idx_scores-1]
                            tp = num_true_examples - cumsum
                            fp = num_examples      - idx_scores - tp
                            fn = cumsum + hard_false_negatives
                            p  = float(tp)/(tp+fp)
                            r  = float(tp)/(tp+fn)
                            precision[idx_res] = p
                            recall   [idx_res] = r

                        # first point in curve is artificial
                        precision[-1] = 1.
                        recall   [-1] = 0.

                        # compute average of precision-recall curve
                        recall_for_conv = np.copy(recall)
                        recall_for_conv = np.append(recall_for_conv[0], recall_for_conv)
                        recall_for_conv = np.append(recall_for_conv, 0.)

                        stepWidths = np.convolve(recall_for_conv,[-0.5,0,0.5],'valid')
                        # integrate is now simply a dot product
                        ap_current = np.dot(precision, stepWidths)
                elif has_gt:
                    ap_current = 0.0
                else:
                    ap_current = float('nan')
                
                ap[di,li,oi] = ap_current
    return ap

def compute_averages(aps):
    d_inf = 0
    o50   = np.where(np.isclose(opt.overlaps,0.5))
    o25   = np.where(np.isclose(opt.overlaps,0.25))
    oAllBut25  = np.where(np.logical_not(np.isclose(opt.overlaps,0.25)))
    avg_dict = {}
    #avg_dict['all_ap']     = np.nanmean(aps[ d_inf,:,:  ])
    avg_dict['all_ap']     = np.nanmean(aps[ d_inf,:,oAllBut25])
    avg_dict['all_ap_50%'] = np.nanmean(aps[ d_inf,:,o50])
    avg_dict['all_ap_25%'] = np.nanmean(aps[ d_inf,:,o25])
    avg_dict["classes"]  = {}
    for (li,label_name) in enumerate(CLASS_LABELS):
        avg_dict["classes"][label_name]             = {}
        #avg_dict["classes"][label_name]["ap"]       = np.average(aps[ d_inf,li,  :])
        avg_dict["classes"][label_name]["ap"]       = np.average(aps[ d_inf,li,oAllBut25])
        avg_dict["classes"][label_name]["ap50%"]    = np.average(aps[ d_inf,li,o50])
        avg_dict["classes"][label_name]["ap25%"]    = np.average(aps[ d_inf,li,o25])
    return avg_dict

def read_pridiction_npz(path):
    pred_info = {}
    pred = np.load(path)

    num_instance = len(pred['pred_score'])
    mask = torch.from_numpy(pred['pred_masks']).cuda()
    for i in range(num_instance):
        pred_info[path.split('/')[-1] + '_' +str(i)] = { # unique id of instance in all scenes
            'mask': mask[:, i].cpu().numpy(),
            'label_id': pred['pred_classes'][i],
            'conf': pred['pred_score'][i]
        }
    return pred_info

def get_gt_tensor(gt_ids, gt_instances):
    '''
        return a dict of gt_tensor
    '''
    gt_tensor_dict = {}
    point_num = len(gt_ids)
    for label in gt_instances:
        gt_instance_num = len(gt_instances[label])
        gt_tensor = torch.zeros((point_num, gt_instance_num), dtype=torch.bool).cuda()
        for i, gt_instance_info in enumerate(gt_instances[label]):
            gt_tensor[:, i] = torch.from_numpy(gt_ids == gt_instance_info['instance_id'])
        gt_tensor_dict[label] = gt_tensor
    return gt_tensor_dict

def assign_instances_for_scan(pred_file, gt_file):
    '''
        if intersection > 0, then the prediction is considered a match
    '''
    pred_info = read_pridiction_npz(os.path.join(pred_file))
    gt_ids = np.loadtxt(gt_file)
    
    if opt.no_class:
        gt_ids = gt_ids % 1000 + VALID_CLASS_IDS[0] * 1000

    # get gt instances
    gt_instances = get_instances(gt_ids, VALID_CLASS_IDS, CLASS_LABELS, ID_TO_LABEL)
    # associate
    gt2pred = deepcopy(gt_instances)
    for label in gt2pred:
        for gt in gt2pred[label]:
            gt['matched_pred'] = []
    pred2gt = {}
    for label in CLASS_LABELS:
        pred2gt[label] = []
    num_pred_instances = 0
    # mask of void labels in the groundtruth
    bool_void = np.logical_not(np.in1d(gt_ids//1000, VALID_CLASS_IDS))

    gt_tensor_dict = get_gt_tensor(gt_ids, gt_instances)

    # go thru all prediction masks
    for pred_mask_file in (pred_info):
        if opt.no_class:
            label_id = VALID_CLASS_IDS[0]
        else:
            label_id = int(pred_info[pred_mask_file]['label_id'])
        conf = pred_info[pred_mask_file]['conf']
        if not label_id in ID_TO_LABEL:
            continue
        label_name = ID_TO_LABEL[label_id]
        # read the mask
        pred_mask = pred_info[pred_mask_file]['mask']

        if len(pred_mask) != len(gt_ids):
            print('wrong number of lines in ' + pred_mask_file + '(%d) vs #mesh vertices (%d), please double check and/or re-download the mesh' % (len(pred_mask), len(gt_ids)))
            raise NotImplementedError

        # convert to binary
        pred_mask = np.not_equal(pred_mask, 0)
        num = np.count_nonzero(pred_mask)
        if num < opt.min_region_sizes[0]:
            continue  # skip if empty

        pred_instance = {}
        pred_instance['filename'] = pred_mask_file
        pred_instance['pred_id'] = num_pred_instances
        pred_instance['label_id'] = label_id
        pred_instance['vert_count'] = num
        pred_instance['confidence'] = conf
        pred_instance['void_intersection'] = np.count_nonzero(np.logical_and(bool_void, pred_mask))

        # matched gt instances
        matched_gt = []
        gt_tensor = gt_tensor_dict[label_name]
        intersection = torch.sum(gt_tensor & torch.from_numpy(pred_mask).cuda().reshape(-1, 1), dim=0)
        intersect_ids = torch.nonzero(intersection).cpu().numpy().reshape(-1)
        for gt_id in intersect_ids:
            gt_copy = gt_instances[label_name][gt_id].copy()
            pred_copy = pred_instance.copy()
            intersection_num = intersection[gt_id].item()
            gt_copy['intersection']   = intersection_num
            pred_copy['intersection'] = intersection_num
            matched_gt.append(gt_copy)
            gt2pred[label_name][gt_id]['matched_pred'].append(pred_copy)
        
        pred_instance['matched_gt'] = matched_gt
        num_pred_instances += 1
        pred2gt[label_name].append(pred_instance)

    return gt2pred, pred2gt

def print_results(avgs):
    sep     = "" 
    col1    = ":"
    lineLen = 64

    print ("")
    print ("#"*lineLen)
    line  = ""
    line += "{:<15}".format("what"      ) + sep + col1
    line += "{:>15}".format("AP"        ) + sep
    line += "{:>15}".format("AP_50%"    ) + sep
    line += "{:>15}".format("AP_25%"    ) + sep
    print (line)
    print ("#"*lineLen)

    for (li,label_name) in enumerate(CLASS_LABELS):
        ap_avg  = avgs["classes"][label_name]["ap"]
        if np.isnan(ap_avg):
            continue
        ap_50o  = avgs["classes"][label_name]["ap50%"]
        ap_25o  = avgs["classes"][label_name]["ap25%"]
        line  = "{:<15}".format(label_name) + sep + col1
        line += sep + "{:>15.3f}".format(ap_avg ) + sep
        line += sep + "{:>15.3f}".format(ap_50o ) + sep
        line += sep + "{:>15.3f}".format(ap_25o ) + sep
        print (line)

    all_ap_avg  = avgs["all_ap"]
    all_ap_50o  = avgs["all_ap_50%"]
    all_ap_25o  = avgs["all_ap_25%"]

    print ("-"*lineLen)
    line  = "{:<15}".format("average") + sep + col1 
    line += "{:>15.3f}".format(all_ap_avg)  + sep 
    line += "{:>15.3f}".format(all_ap_50o)  + sep
    line += "{:>15.3f}".format(all_ap_25o)  + sep
    print (line)
    print ("")

def write_result_file(avgs, filename):
    _SPLITTER = ','
    with open(filename, 'w') as f:
        f.write(_SPLITTER.join(['class', 'class id', 'ap', 'ap50', 'ap25']) + '\n')
        for i in range(len(VALID_CLASS_IDS)):
            class_name = CLASS_LABELS[i]
            class_id = VALID_CLASS_IDS[i]
            ap = avgs["classes"][class_name]["ap"]
            ap50 = avgs["classes"][class_name]["ap50%"]
            ap25 = avgs["classes"][class_name]["ap25%"]
            f.write(_SPLITTER.join([str(x) for x in [class_name, class_id, ap, ap50, ap25]]) + '\n')    
        f.write(_SPLITTER.join([str(x) for x in [avgs["all_ap"], avgs["all_ap_50%"], avgs["all_ap_25%"]]]) + '\n')    

def evaluate(pred_files, gt_files, pred_path, output_file):
    print ('evaluating', len(pred_files), 'scans...')
    matches = {}
    for i in range(len(pred_files)):
        matches_key = os.path.abspath(gt_files[i])
        # assign gt to predictions
        gt2pred, pred2gt = assign_instances_for_scan(pred_files[i], gt_files[i])
        matches[matches_key] = {}
        matches[matches_key]['gt'] = gt2pred
        matches[matches_key]['pred'] = pred2gt
        sys.stdout.write("\rscans processed: {}".format(i+1))
        sys.stdout.flush()
    ap_scores = evaluate_matches(matches)
    avgs = compute_averages(ap_scores)

    # print
    print_results(avgs)
    write_result_file(avgs, output_file)

def main():
    print('start evaluating:', opt.pred_path.split('/')[-1])
    pred_files = [f for f in sorted(os.listdir(opt.pred_path)) if f.endswith('.npz') and not f.startswith('semantic_instance_evaluation')]
    gt_files = []

    for i in range(len(pred_files)):
        gt_file = os.path.join(opt.gt_path, pred_files[i].replace('.npz', '.txt'))
        if not os.path.isfile(gt_file):
            print('Result file {} does not match any gt file'.format(pred_files[i]))
            raise NotImplementedError

        gt_files.append(gt_file)
        pred_files[i] = os.path.join(opt.pred_path, pred_files[i])

    evaluate(pred_files, gt_files, opt.pred_path, opt.output_file)
    print('save results to', opt.output_file)

if __name__ == '__main__':
    main()